Network Working Group G. Klyne
Request for Comments: 2533 Content Technologies/5GM
Category: Standards Track March 1999
A Syntax for Describing Media Feature Sets
Status of this Memo
This document specifies an Internet standards track protocol for the
Internet community, and requests discussion and suggestions for
improvements. Please refer to the current edition of the "Internet
Official Protocol Standards" (STD 1) for the standardization state
and status of this protocol. Distribution of this memo is unlimited.
Copyright Notice
Copyright (C) The Internet Society (1999). All Rights Reserved.
Abstract
A number of Internet application protocols have a need to provide
content negotiation for the resources with which they interact [1].
A framework for sUCh negotiation is described in [2], part of which
is a way to describe the range of media features which can be handled
by the sender, recipient or document transmission format of a
message. A format for a vocabulary of individual media features and
procedures for feature registration are presented in [3].
This document introduces and describes a syntax that can be used to
define feature sets which are formed from combinations and relations
involving individual media features. Such feature sets are used to
describe the media feature handling capabilities of message senders,
recipients and file formats.
An algorithm for feature set matching is also described here.
Table of Contents
1. Introduction.............................................3
1.1 Structure of this document ...........................3
1.2 Document terminology and conventions .................4
1.3 Discussion of this document ..........................4
2. Content feature terminology and definitions..............4
3. Media feature combinations and capabilities..............5
3.1 Media features .......................................5
3.2 Media feature collections and sets ...................5
3.3 Media feature set descriptions .......................6
3.4 Media feature combination scenario ...................7
3.4.1 Data resource options............................7
3.4.2 Recipient capabilities...........................7
3.4.3 Combined options.................................7
3.5 Feature set predicates ...............................8
3.5.1 Comparison with Directory search filters.........8
3.6 Describing preferences ...............................9
3.7 Combining preferences ...............................10
4. Feature set representation..............................11
4.1 Textual representation of predicates ................11
4.2 Interpretation of feature predicate syntax ..........12
4.2.1 Filter syntax...................................12
4.2.2 Feature comparison..............................13
4.2.3 Feature tags....................................13
4.2.4 Feature values..................................14
4.2.4.1 Boolean values 14
4.2.4.2 Numeric values 14
4.2.4.3 Token values 15
4.2.4.4 String values 15
4.2.5 Notational conveniences.........................15
4.3 Feature set definition example ......................16
5. Matching feature sets...................................16
5.1 Feature set matching strategy .......................18
5.2 Formulating the goal predicate ......................19
5.3 Replace set eXPressions .............................19
5.4 Move logical negations inwards ......................20
5.5 Replace comparisons and logical negations ...........20
5.6 Conversion to canonical form ........................21
5.7 Grouping of feature predicates ......................22
5.8 Merge single-feature constraints ....................22
5.8.1 Rules for simplifying ordered values............23
5.8.2 Rules for simplifying unordered values..........23
6. Other features and issues...............................24
6.1 Named and auxiliary predicates ......................24
6.1.1 Defining a named predicate......................24
6.1.2 Invoking named predicates.......................25
6.1.3 Auxiliary predicates in a filter................25
6.1.4 Feature matching with named predicates..........25
6.1.5 Example.........................................26
6.2 Unit designations ...................................26
6.3 Unknown feature value data types ....................27
7. Examples and additional comments........................27
7.1 Worked example ......................................27
7.2 A note on feature tag scoping .......................31
8. Security Considerations.................................34
9. Acknowledgements........................................34
10. References.............................................35
11. Author"s Address.......................................36
Full Copyright Statement...................................37
1. Introduction
A number of Internet application protocols have a need to provide
content negotiation for the resources with which they interact [1].
A framework for such negotiation is described in [2]. A part of this
framework is a way to describe the range of media features which can
be handled by the sender, recipient or document transmission format
of a message.
Descriptions of media feature capabilities need to be based upon some
underlying vocabulary of individual media features. A format for
such a vocabulary and procedures for registering media features
within this vocabulary are presented in [3].
This document defines a syntax that can be used to describe feature
sets which are formed from combinations and relations involving
individual media features. Such feature sets are used to describe
the media handling capabilities of message senders, recipients and
file formats.
An algorithm for feature set matching is also described here.
The feature set syntax is built upon the principle of using feature
set predicates as "mathematical relations" which define constraints
on feature handling capabilities. This allows that the same form of
feature set expression can be used to describe sender, receiver and
file format capabilities. This has been loosely modelled on the way
that relational databases use Boolean expresions to describe a set of
result values, and a syntax that is based upon LDAP search filters.
1.1 Structure of this document
The main part of this memo addresses the following main areas:
Section 2 introduces and references some terms which are used with
special meaning.
Section 3 introduces the concept of describing media handling
capabilities as combinations of possible media features, and the idea
of using Boolean expressions to express such combinations.
Section 4 contains a description of a syntax for describing feature
sets based on the previously-introduced idea of Boolean expressions
used to describe media feature combinations.
Section 5 describes an algorithm for feature set matching.
Section 6 discusses some additional media feature description and
processing issues that may be viewed as extensions to the core
framework.
Section 7 contains a worked example of feature set matching, and some
additional explanatory comments spurred by issues arising from
applying this framework to fascimile transmissions.
1.2 Document terminology and conventions
The key Words "MUST", "MUST NOT", "REQUIRED", "SHALL", "SHALL NOT",
"SHOULD", SHOULD NOT", "RECOMMENDED", "MAY", and "OPTIONAL" in this
document are to be interpreted as described in RFC2119.
NOTE: Comments like this provide additional nonessential
information about the rationale behind this document. Such
information is not needed for building a conformant
implementation, but may help those who wish to understand the
design in greater depth.
1.3 Discussion of this document
Discussion of this document should take place on the content
negotiation and media feature registration mailing list hosted by the
Internet Mail Consortium (IMC):
Please send comments regarding this document to:
ietf-medfree@imc.org
To subscribe to this list, send a message with the body "subscribe"
to "ietf-medfree-request@imc.org".
To see what has gone on before you subscribed, please see the mailing
list archive at:
http://www.imc.org/ietf-medfree/
2. Content feature terminology and definitions
Feature Collection
is a collection of different media features and associated values.
This might be viewed as describing a specific rendering of a
specific instance of a document or resource by a specific
recipient.
Feature Set
is a set of zero, one or more feature collections.
NOTE: this term is used slightly differently by earlier work on
Transparent Content Negotiation in HTTP [4].
Feature set predicate
A function of an arbitrary feature collection value which returns
a Boolean result. A TRUE result is taken to mean that the
corresponding feature collection belongs to some set of media
feature handling capabilities defined by this predicate.
Other terms used in this memo are defined in [2].
3. Media feature combinations and capabilities
3.1 Media features
This memo assumes that individual media feature values are simple
atomic values:
o Boolean values.
o Enumerated values.
o Text string values (treated as atomic entities, like enumerated
value tokens).
o Numeric values (Integer or rational).
These values all have the property that they can be compared for
equality ("="), and that numeric and ordered enumeration values can
be compared for less-than and greater-than relationship ("<=", ">=").
These basic comparison operations are used as the primitive building
blocks for more comprehensive capability expressions.
3.2 Media feature collections and sets
Any single media feature value can be thought of as just one
component of a feature collection that describes some instance of a
resource (e.g. a printed document, a displayed image, etc.). Such a
feature collection consists of a number of media feature tags (each
per [3]) and associated feature values.
A feature set is a set containing a number of feature collections.
Thus, a feature set can describe a number of different data resource
instances. These can correspond to different treatments of a single
data resource (e.g. different resolutions used for printing a given
document), a number of different data resources subjected to a common
treatment (e.g. the range of different images that can be rendered on
a given display), or some combination of these (see examples below).
Thus, a description of a feature set can describe the capabilities of
a data resource or some entity that processes or renders a data
resource.
3.3 Media feature set descriptions
A feature set may be unbounded. For example, in principle, there is
no limit on the number of different documents that may be output
using a given printer. But to be practically useful, a feature set
description must be finite.
The general approach to describing feature sets is to start from the
assumption that anything is possible; i.e. the feature set contains
all possible document instances (feature collections). Then
constraints are applied that progressively remove document instances
from this set; e.g. for a monochrome printer, all document instances
that use colour are removed, or for a document that must be rendered
at some minimum resolution, all document instances with lesser
resolutions are removed from the set. The mechanism used to remove
document instances from the set is the mathematical idea of a
"relation"; i.e. a Boolean function (a "predicate") that takes a
feature collection parameter and returns a Boolean value that is TRUE
if the feature collection describes an acceptable document instance,
or FALSE if it describes one that is excluded.
P(C)
P(C) = TRUE <- : -> P(C) = FALSE
:
+----------:----------+ This box represents some
: set of feature collections (C)
Included : Excluded that is constrained by the
: predicate P.
+----------:----------+
:
The result of applying a series of such constraints is a smaller set
of feature collections that represent some media handling capability.
Where the individual constraints are represented by predicates that
each describe some media handling capability, the combined effect of
these constraints is some subset of the individual constraint
capabilities that can be represented by a predicate that is the
logical-AND of the individual constraint predicates.
3.4 Media feature combination scenario
This section develops some example scenarios, introducing the
notation that is defined formally in section 4.
3.4.1 Data resource options
The following expression describes a data resource that can be
displayed either:
(a) as a 750x500 pixel image using 15 colours, or
(b) at 150dpi on an A4 page.
( (& (pix-x=750) (pix-y=500) (color=15) )
(& (dpi>=150) (papersize=iso-A4) ) )
3.4.2 Recipient capabilities
The following expression describes a receiving system that has:
(a) a screen capable of displaying 640*480 pixels and 16 million
colours (24 bits per pixel), 800*600 pixels and 64 thousand
colours (16 bits per pixel) or 1024*768 pixels and 256 colours
(8 bits per pixel), or
(b) a printer capable of rendering 300dpi on A4 paper.
( (& ( (& (pix-x<=640) (pix-y<=480) (color<=16777216) )
(& (pix-x<=800) (pix-y<=600) (color<=65535) )
(& (pix-x<=1024) (pix-y<=768) (color<=256) ) )
(ua-media=screen) )
(& (dpi=300)
(ua-media=stationery) (papersize=iso-A4) ) )
Note that this expression says nothing about the colour or grey-scale
capabilities of the printer. In the scheme presented here, it is
presumed to be unconstrained in this respect (or, more realistically,
any such constraints are handled out-of-band by anyone sending to
this recipient).
3.4.3 Combined options
The following example describes the range of document representations
available when the resource described in the first example above is
sent to the recipient described in the second example. This is the
result of combining their capability feature sets:
( (& (pix-x=750) (pix-y=500) (color=15) )
(& (dpi=300) (ua-media=stationery) (papersize=iso-A4) ) )
The feature set described by this expression is the intersection of
the sets described by the previous two capability expressions.
3.5 Feature set predicates
There are many ways of representing a predicate. The ideas in this
memo were inspired by the programming language Prolog [5], and its
use of predicates to describe sets of objects.
For the purpose of media feature descriptions in networked
application protocols, the format used for LDAP search filters [7,8]
has been adopted, because it is a good match for the requirements of
capability identification, and has a very simple structure that is
easy to parse and process.
3.5.1 Comparison with directory search filters
Observe that a feature collection is similar to a directory entry, in
that it consists of a collection of named values. Further, the
semantics of the mechanism for selecting feature collections from a
feature set is in many respects similar to selection of directory
entries from a directory.
A feature set predicate used to describe media handling capabilities
is implicitly applied to some feature collection. Within the
predicate, members of the feature collection are identified by their
feature tags, and are compared with known feature values. (Compare
with the way an LDAP search filter is applied to a directory entry,
whose members are identified by attribute type names, and compared
with known attribute values.)
For example, in:
(& (dpi>=150) (papersize=iso-A4) )
the tokens "dpi" and "papersize" are feature tags, and "150" and "
iso-A4" are feature values. (In a corresponding LDAP search filter,
they would be directory entry attribute types and attribute values.)
Differences between directory selection (per [7]) and feature set
selection are:
o Directory selection provides substring-, approximate- and
extensible- matching for attribute values. Such matching is
not provided for feature set selection.
o Directory selection may be based on the presence of an
attribute without regard to its value. Within the semantic
framework described by this document, Boolean-valued feature
tests can be used to provide a similar effect.
o Directory selection provides for matching rules that test for
the presence or absence of a named attribute type.
o Directory selection provides for matching rules which are
dependent upon the declared data type of an attribute value.
o Feature selection provides for the association of a quality
value with a feature predicate as a way of ranking the selected
value collections.
Within the semantic framework described by this document, Boolean-
valued feature tests can be used where presence tests would be used
in a directory search filter.
The idea of extensible matching and matching rules dependent upon
data types are facets of a problem not addressed by this memo, but
which do not necessarily affect the feature selection syntax. An
ASPect that might bear on the syntax would be specification of an
explicit matching rule as part of a selection expression.
3.6 Describing preferences
A convenient way to describe preferences is by numeric "quality
values".
It has been suggested that numeric quality values are potentially
misleading if used as more than just a way of ranking options. For
the purposes of this memo, ranking of options is sufficient.
Numeric quality values in the range 0 to 1, with up to 3 fractional
digits, are used to rank feature sets according to preference.
Higher values are preferred over lower values, and equal values are
presumed to be equally preferred. Beyond this, the actual number
used has no significance defined here. Arithmetic operations on
quality values are likely to produce unpredictable results unless
appropriate semantics have been defined for the context where such
operations are used.
In the absence of any explicitly applied quality value, a value of
"1" is assumed.
Using the notation defined later, a quality value may be attached to
any feature set predicate sub-expression:
( (& (pix-x=750) (pix-y=500) (color=15) );q=0.8
(& (dpi>=150) (papersize=iso-A4) ) ;q=0.7 )
Section 3.7 below explains that quality values attached to
sub-expressions are not always useful.
NOTE: the syntax for quality values used here taken from
that defined for HTTP "Accept:" headers in RFC2068 [9],
section 3.9. However, the use of quality values defined
here does not go as far as that defined in RFC2068.
3.7 Combining preferences
The general problem of describing and combining preferences among
feature sets is very much more complex than simply describing
allowable feature sets. For example, given two feature sets:
(& (a1);q=0.8 (b1);q=0.7 )
(& (a2);q=0.5 (b2);q=0.9 )
where:
feature a1 is preferred over a2
feature b2 is preferred over b1
Which of these feature sets is preferred? In the absence of
additional information or assumptions, there is no generally
satisfactory answer to this.
The proposed resolution of this issue is simply to say that no rules
are provided for combining preference information. Applied to the
above example, any preference information about (a1) in relation to
(a2), or (b1) in relation to (b2) is not presumed to convey
information about preference of (& (a1) (b1) ) in relation to (& (a2)
(b2) ).
In practical terms, this restricts the application of preference
information to top-level predicate clauses. A top-level clause
completely defines an allowable feature set; clauses combined by
logical-AND operators cannot be top-level clauses (see canonical
format for feature set predicates, described later).
NOTE: This memo does not apply specific meaning to quality values
or rules for combining them. Application of such meanings and
rules is not prohibited, but is seen as an area for continuing
research and experimentation.
An example of a design that uses extended quality value semantics
and combining operations is "Transparent Content Negotiation in
HTTP" [4]. Other work that also extends quality values is the
content negotiation algorithm in the Apache HTTP server [14].
4. Feature set representation
The foregoing sections have described a framework for defining
feature sets with predicates applied to feature collections. This
section presents a concrete representation for feature set
predicates.
4.1 Textual representation of predicates
The text representation of a feature set is based on RFC2254 "The
String Representation of LDAP Search Filters" [8], excluding those
elements not relevant to feature set selection (discussed above), and
adding elements specific to feature set selection (e.g. options to
associate quality values with predicates).
The format of a feature predicate is defined by the production for
"filter" in the following, using the syntax notation and core rules
of RFC2234 [10]:
filter = "(" filtercomp ")" *( ";" parameter )
parameter = "q" "=" qvalue
/ ext-param "=" ext-value
qvalue = ( "0" [ "." 0*3DIGIT ] )
/ ( "1" [ "." 0*3("0") ] )
ext-param = ALPHA *( ALPHA / DIGIT / "-" )
ext-value = <parameter value, according to the named parameter>
filtercomp = and / or / not / item
and = "&" filterlist
or = "" filterlist
not = "!" filter
filterlist = 1*filter
item = simple / set / ext-pred
set = attr "=" "[" setentry *( "," setentry ) "]"
setentry = value "/" range
range = value ".." value
simple = attr filtertype value
filtertype = equal / greater / less
equal = "="
greater = ">="
less = "<="
attr = ftag
value = fvalue
ftag = <Feature tag, as defined in RFC2506 [3]>
fvalue = Boolean / number / token / string
Boolean = "TRUE" / "FALSE"
number = integer / rational
integer = [ "+" / "-" ] 1*DIGIT
rational = [ "+" / "-" ] 1*DIGIT "/" 1*DIGIT
token = ALPHA *( ALPHA / DIGIT / "-" )
string = DQUOTE *(%x20-21 / %x23-7E) DQUOTE
; quoted string of SP and VCHAR without DQUOTE
ext-pred = <Extension constraint predicate, not defined here>
(Subject to constraints imposed by the protocol that carries a
feature predicate, whitespace characters may appear between any pair
of syntax elements or literals that appear on the right hand side of
these productions.)
As described, the syntax permits parameters (including quality
values) to be attached to any "filter" value in the predicate (not
just top-level values). Only top-level quality values are
recognized. If no explicit quality value is given, a value of "1.0"
is applied.
NOTE: The flexible approach to quality values and other parameter
values in this syntax has been adopted for two reasons: (a) to
make it easy to combine separately constructed feature predicates,
and (b) to provide an extensible tagging mechanism for possible
future use (for example, to incorporate a conceivable requirement
to explicitly specify a matching rule).
4.2 Interpretation of feature predicate syntax
A feature set predicate is described by the syntax production for "
filter".
4.2.1 Filter syntax
A "filter" is defined as either a simple feature comparison ("item",
see below) or a composite filter ("and", "or", "not"), decorated with
optional parameter values (including "q=qvalue").
A composite filter is a logical combination of one or more "filter"
values:
(& f1 f2 ... fn ) is the logical-AND of the filter values "f1",
"f2" up to "fn". That is, it is satisfied by
any feature collection that satisfies all of
the predicates represented by those filters.
( f1 f2 ... fn ) is the logical-OR of the filter values "f1",
"f2" up to "fn". That is, it is satisfied by
any feature collection that satisfies at least
one of the predicates represented by those
filters.
(! f1 ) is the logical negation of the filter value
"f1". That is, it is satusfied by any feature
collection that does NOT satisfy the predicate
represented by "f1".
4.2.2 Feature comparison
A feature comparison is defined by the "simple" option of the syntax
production for "item". There are three basic forms:
(ftag=value) compares the feature named "ftag" (in some
feature collection that is being tested) with
the supplied "value", and matches if they are
equal. This can be used with any type of
feaure value (numeric, Boolean, token or
string).
(ftag<=value) compares the numeric feature named "ftag" with
the supplied "value", and matches if the
feature is less than or equal to "value".
(ftag>=value) compares the numeric feature named "ftag" with
the supplied "value", and matches if the
feature is greater than or equal to "value".
Less-than and greater-than tests may be performed with feature values
that are not numeric but, in general, they amount to equality tests
as there is no ordering relation on non-numeric values defined by
this specification. Specific applications may define such ordering
relations on specific feature tags, but such definitions are beyond
the scope of (and not required for conformance to) this
specification.
4.2.3 Feature tags
Feature tags conform to the syntax given in "Media Feature Tag
Registration Procedure" [3]. Feature tags used to describe
capabilities should be registered using the procedures described in
that memo. Unregistered feature tags should be allocated in the "URI
tree", as discussed in the media feature registration procedures memo
[3].
If an unrecognized feature tag is encountered in the course of
feature set predicate processing, it should be still be processed as
a legitimate feature tag. The feature set matching rules are
designed to allow new feature tags to be introduced without affecting
the validity of existing capability assertions.
4.2.4 Feature values
A feature may have a number, Boolean, token or string value.
4.2.4.1 Boolean values
A Boolean is simply a token with two predefined values: "TRUE" and
"FALSE". (Upper- or lower- case letters may be used in any
combination.)
4.2.4.2 Numeric values
A numeric value is either a decimal integer, optionally preceded by a
"+" or "-" sign, or rational number.
A rational number is expressed as "n/m", optionally preceded by a "+"
or "-" sign. The "n" and "m" are unsigned decimal integers, and the
value represented by "n/m" is "n" divided by "m". Thus, the
following are all valid representations of the number 1.5:
3/2
+15/10
600/400
Thus, several rational number forms may express the same value. A
canonical form of rational number is oBTained by finding the highest
common factor of "n" and "m", and dividing both "n" and "m" by that
value.
A simple integer value may be used anywhere in place of a rational
number. Thus, we have:
+5 is equivalent to +5/1 or +50/10, etc.
-2 is equivalent to -2/1 or -4/2, etc.
Any sign in a rational number must precede the entire number, so the
following are not valid rational numbers:
3/+2, 15/-10 (**NOT VALID**)
4.2.4.3 Token values
A token value is any sequence of letters, digits and "-" characters
that conforms to the syntax for "token" given above. It is a name
that stands for some (unspecified) value.
4.2.4.4 String values
A string value is any sequence of characters enclosed in double
quotes that conform to the syntax for "string" given above.
The semantics of string defined by this memo are the same as those
for a token value. But a string allows a far greater variety of
internal formats, and specific applications may choose to interpret
the content in ways that go beyond those given here. Where such
interpretation is possible, the allowed string formats and the
corresponding interpretations should be indicated in the media
feature registration (per RFC2506 [3]).
4.2.5 Notational conveniences
The "set" option of the syntax production for "item" is simply a
shorthand notation for some common situations that can be expressed
using "simple" constructs. Occurrences of "set" items can eliminated
by applying the following identities:
T = [ E1, E2, ... En ] --> ( (T=[E1]) (T=[E2]) ... (T=[En]) )
(T=[R1..R2]) --> (& (T>=R1) (T<=R2) )
(T=[E]) --> (T=E)
Examples:
The expression:
( paper-size=[A4,B4] )
can be used to express a capability to print documents on either A4
or B4 sized paper.
The expression:
( width=[4..17/2] )
might be used to express a capability to print documents that are
anywhere between 4 and 8.5 inches wide.
The set construct is designed so that enumerated values and ranges
can be combined in a single expression, e.g.:
( width=[3,4,6..17/2] )
4.3 Feature set definition example
The following is an example of a feature predicate that describes a
number of image size and resolution combinations, presuming the
registration and use of "Pix-x", "Pix-y", "Res-x" and "Res-y" feature
tags:
( (& (Pix-x=1024)
(Pix-y=768)
( (& (Res-x=150) (Res-y=150) )
(& (Res-x=150) (Res-y=300) )
(& (Res-x=300) (Res-y=300) )
(& (Res-x=300) (Res-y=600) )
(& (Res-x=600) (Res-y=600) ) ) )
(& (Pix-x=800)
(Pix-y=600)
( (& (Res-x=150) (Res-y=150) )
(& (Res-x=150) (Res-y=300) )
(& (Res-x=300) (Res-y=300) )
(& (Res-x=300) (Res-y=600) )
(& (Res-x=600) (Res-y=600) ) ) ) ;q=0.9
(& (Pix-x=640)
(Pix-y=480)
( (& (Res-x=150) (Res-y=150) )
(& (Res-x=150) (Res-y=300) )
(& (Res-x=300) (Res-y=300) )
(& (Res-x=300) (Res-y=600) )
(& (Res-x=600) (Res-y=600) ) ) ) ;q=0.8 )
5. Matching feature sets
This section presents a procedure for combining feature sets to
determine the common feature collections to which they refer, if
there are any. Making a selection from the possible feature
collections (based on q-values or otherwise) is not covered here.
Matching a feature set to some given feature collection is
essentially very straightforward: the feature set predicate is
simply evaluated for the given feature collection, and the result
(TRUE or FALSE) indicates whether the feature collection matches the
capabilities, and the associated quality value can be used for
selecting among alternative feature collections.
Matching a feature set to some other feature set is less
straightforward. Here, the problem is to determine whether or not
there is at least one feature collection that matches both feature
sets (e.g. is there an overlap between the feature capabilities of a
given file format and the feature capabilities of a given recipient?)
This feature set matching is accomplished by logical manipulation of
the predicate expressions as described in the following sub-sections.
For this procedure to work reliably, the predicates must be reduced
to a canonical form. The canonical form used here is "disjunctive
normal form". A syntax for disjunctive normal form is:
filter = orlist
orlist = "(" "" andlist ")" / term
andlist = "(" "&" termlist ")" / term
termlist = 1*term
term = "(" "!" simple ")" / simple
where "simple" is as described previously in section 4.1. Thus, the
canonicalized form has at most three levels: an outermost "(...)"
disjunction of "(&...)" conjunctions of possibly negated feature
value tests.
NOTE: The usual canonical form for predicate expressions is
"clausal form". Procedures for converting general predicate
expressions are given in [5] (section 10.2), [11] (section 2.13)
and [12] (section 5.3.2).
"Clausal form" for a predicate is similar to "conjunctive normal
form" for a proposition, being a conjunction (logical AND) of
disjunctions (logical ORs). The related form used here, better
suited to feature set matching, is "disjunctive normal form",
which is a logical disjunction (OR) of conjunctions (ANDs). In
this form, the aim of feature set matching is to show that at
least one of the disjunctions can be satisfied by some feature
collection.
Is this consideration of canonical forms really required? After
all, the feature predicates are just Boolean expressions, aren"t
they? Well, no: a feature predicate is a Boolean expression
containing primitive feature value tests (comparisons),
represented by "item" in the feature predicate syntax. If these
tests could all be assumed to be independently TRUE or FALSE, then
each could be regarded as an atomic proposition, and the whole
predicate could be dealt with according to the (relatively simple)
rules of Propositional Calculus.
But, in general, the same feature tag may appear in more than one
predicate "item", so the tests cannot be regarded as independent.
Indeed, interdependence is needed in any meaningful application of
feature set matching, and it is important to capture these
dependencies (e.g. does the set of resolutions that a sender can
supply overlap the set of resolutions that a recipient can
handle?). Thus, we have to deal with elements of the Predicate
Calculus, with some additional rules for algebraic manipulation.
A description of both the Propositional and Predicate calculi can
be found in [12].
We aim to show that these additional rules are more unfamiliar
than complicated. The construction and use of feature predicates
actually avoids some of the complexity of dealing with fully-
generalized Predicate Calculus.
5.1 Feature set matching strategy
The overall strategy for matching feature sets, expanded below, is:
1. Formulate the feature set match hypothesis.
2. Replace "set" expressions with equivalent comparisons.
3. Move logical negations "inwards", so that they are all applied
directly to feature comparisons.
4. Eliminate logical negations, and express all feature comparisons
in terms of just four comparison operators
5. Reduce the hypothesis to canonical disjunctive normal form (a
disjunction of conjunctions).
6. For each of the conjunctions, attempt to show that it can be
satisfied by some feature collection.
6.1 Separate the feature value tests into independent feature
groups, such that each group contains tests involving just one
feature tag. Thus, no predicate in a feature group contains a
feature tag that also appears in some other group.
6.2 For each feature group, merge the various constraints to a
minimum form. This process either yields a reduced expression
for the allowable range of feature values, or an expression
containing the value FALSE, which is an indication that no
combination of feature values can satisfy the constraints (in
which case the corresponding conjunction can never be
satisfied).
7. If the remaining disjunction contains at least one satisfiable
conjunction, then the constraints are shown to be satisfiable.
The final expression obtained by this procedure, if it is non-empty,
can be used as a statement of the resulting feature set for possible
further matching operations. That is, it can be used as a starting
point for combining with additional feature set constraint predicate
to determine a feature set that is constrained by the capabilities of
several entities in a message transfer path.
NOTE: as presented, the feature matching process evaluates (and
stores) all conjunctions of the disjunctive normal form before
combining feature tag comparisons and eliminating unsatisfiable
conjunctions. For low-memory systems an alternative approach is
possible, in which each normal form conjunction is enumerated and
evaluated in turn, with only those that are satisfiable being
retained for further use.
5.2 Formulating the goal predicate
A formal statement of the problem we need to solve can be given as:
given two feature set predicates, "(P x)" and "(Q x)", where "x" is
some feature collection, we wish to establish the truth or otherwise
of the proposition:
EXISTS(x) : (P x) AND (Q x)
i.e. does there exist a feature collection "x" that satisfies both
predicates, "P" and "Q"?
Then, if feature sets to be matched are described by predicates "P"
and "Q", the problem is to determine if there is any feature set
satisfying the goal predicate:
(& P Q)
i.e. to determine whether the set thus described is non-empty.
5.3 Replace set expressions
Replace all "set" instances in the goal predicate with equivalent
"simple" forms:
T = [ E1, E2, ... En ] --> ( (T=[E1]) (T=[E2]) ... (T=[En]) )
(T=[R1..R2]) --> (& (T>=R1) (T<=R2) )
(T=[E]) --> (T=E)
5.4 Move logical negations inwards
The goal of this step is to move all logical negations so that they
are applied directly to feature comparisons. During the following
step, these logical negations are replaced by alternative comparison
operators.
This is achieved by repeated application of the following
transformation rules:
(! (& A1 A2 ... Am ) ) --> ( (! A1 ) (! A2 ) ... (! Am ) )
(! ( A1 A2 ... Am ) ) --> (& (! A1 ) (! A2 ) ... (! Am ) )
(! (! A ) ) --> A
The first two rules are extended forms of De Morgan"s law, and the
third is elimination of double negatives.
5.5 Replace comparisons and logical negations
The predicates are derived from the syntax described previously, and
contain primitive value testing functions "=", "<=", ">=". The
primitive tests have a number of well known properties that are
exploited to reach a useful conclusion; e.g.
(A = B) & (B = C) => (A = C)
(A <= B) & (B <= C) => (A <= C)
These rules form a core body of logic statements against which the
goal predicate can be evaluated. The form in which these statements
are expressed is important to realizing an effective predicate
matching algorithm (i.e. one that doesn"t loop or fail to find a
valid result). The first step in formulating these rules is to
simplify the framework of primitive predicates.
The primitive predicates from which feature set definitions are
constructed are "=", "<=" and ">=". Observe that, given any pair of
feature values, the relationship between them must be exactly one of
the following:
(LT a b): "a" is less than "b".
(EQ a b): "a" is equal to "b".
(GT a b): "a" is greater than "b".
(NE a b): "a" is not equal to "b", and is not less than
or greater than "b".
(The final case arises when two values are compared for which no
ordering relationship is defined, and the values are not equal; e.g.
two unequal string values.)
These four cases can be captured by a pair of primitive predicates:
(LE a b): "a" is less than or equal to "b".
(GE a b): "a" is greater than or equal to "b".
The four cases described above are prepresented by the following
combinations of primitive predicate values:
(LE a b) (GE a b) relationship
----------------------------------
TRUE FALSE (LT a b)
TRUE TRUE (EQ a b)
FALSE TRUE (GT a b)
FALSE FALSE (NE a b)
Thus, the original 3 primitive tests can be translated to
combinations of just LE and GE, reducing the number of additional
relationships that must be subsequently captured:
(a <= b) --> (LE a b)
(a >= b) --> (GE a b)
(a = b) --> (& (LE a b) (GE a b) )
Further, logical negations of the original 3 primitive tests can be
eliminated by the introduction of "not-greater" and "not-less"
primitives
(NG a b) == (! (GE a b) )
(NL a b) == (! (LE a b) )
using the following transformation rules:
(! (a = b) ) --> ( (NL a b) (NG a b) )
(! (a <= b) ) --> (NL a b)
(! (a >= b) ) --> (NG a b)
Thus, we have rules to transform all comparisons and logical
negations into combinations of just 4 relational operators.
5.6 Conversion to canonical form
NOTE: Logical negations have been eliminated in the previous step.
Expand bracketed disjunctions, and flatten bracketed conjunctions and
disjunctions:
(& ( A1 A2 ... Am ) B1 B2 ... Bn )
--> ( (& A1 B1 B2 ... Bn )
(& A2 B1 B2 ... Bn )
:
(& Am B1 B2 ... Bn ) )
(& (& A1 A2 ... Am ) B1 B2 ... Bn )
--> (& A1 A2 ... Am B1 B2 ... Bn )
( ( A1 A2 ... Am ) B1 B2 ... Bn )
--> ( A1 A2 ... Am B1 B2 ... Bn )
The result is in "disjunctive normal form", a disjunction of
conjunctions:
( (& S11 S12 ... )
(& S21 S22 ... )
:
(& Sm1 Sm2 ... Smn ) )
where the "Sij" elements are simple feature comparison forms
constructed during the step at section 5.5. Each term within the
top-level "(...)" construct represents a single possible feature set
that satisfies the goal. Note that the order of entries within the
top-level "(...)", and within each "(&...)", is immaterial.
From here on, each conjunction "(&...)" is processed separately.
Only one of these needs to be satisfiable for the original goal to be
satisfiable.
(A textbook conversion to clausal form [5,11] uses slightly different
rules to yield a "conjunctive normal form".)
5.7 Grouping of feature predicates
NOTE: Remember that from here on, each conjunction is treated
separately.
Each simple feature predicate contains a "left-hand" feature tag and
a "right-hand" feature value with which it is compared.
To arrange these into independent groups, simple predicates are
grouped according to their left hand feature tag ("f").
5.8 Merge single-feature constraints
Within each group, apply the predicate simplification rules given
below to eliminate redundant single-feature constraints. All
single-feature predicates are reduced to an equality or range
constraint on that feature, possibly combined with a number of non-
equality statements.
If the constraints on any feature are found to be contradictory (i.e.
resolved to FALSE according to the applied rules), the containing
conjunction is not satisfiable and may be discarded. Otherwise, the
resulting description is a minimal form of that particular
conjunction of the feature set definition.
5.8.1 Rules for simplifying ordered values
These rules are applicable where there is an ordering relationship
between the given values "a" and "b":
(LE f a) (LE f b) --> (LE f a), a<=b
(LE f b), otherwise
(LE f a) (GE f b) --> FALSE, a<b
(LE f a) (NL f b) --> FALSE, a<=b
(LE f a) (NG f b) --> (LE f a), a<b
(NG f b), otherwise
(GE f a) (GE f b) --> (GE f a), a>=b
(GE f b), otherwise
(GE f a) (NL f b) --> (GE f a) a>b
(NL f b), otherwise
(GE f a) (NG f b) --> FALSE, a>=b
(NL f a) (NL f b) --> (NL f a), a>=b
(NL f b), otherwise
(NL f a) (NG f b) --> FALSE, a>=b
(NG f a) (NG f b) --> (NG f a), a<=b
(NG f b), otherwise
5.8.2 Rules for simplifying unordered values
These rules are applicable where there is no ordering relationship
applicable to the given values "a" and "b":
(LE f a) (LE f b) --> (LE f a), a=b
FALSE, otherwise
(LE f a) (GE f b) --> FALSE, a!=b
(LE f a) (NL f b) --> (LE f a) a!=b
FALSE, otherwise
(LE f a) (NG f b) --> (LE f a), a!=b
FALSE, otherwise
(GE f a) (GE f b) --> (GE f a), a=b
FALSE, otherwise
(GE f a) (NL f b) --> (GE f a) a!=b
FALSE, otherwise
(GE f a) (NG f b) --> (GE f a) a!=b
FALSE, otherwise
(NL f a) (NL f b) --> (NL f a), a=b
(NL f a) (NG f b) --> (NL f a), a=b
(NG f a) (NG f b) --> (NG f a), a=b
6. Other features and issues
6.1 Named and auxiliary predicates
Named and auxiliary predicates can serve two purposes:
(a) making complex predicates easier to write and understand, and
(b) providing a possible basis for naming and registering feature
sets.
6.1.1 Defining a named predicate
A named predicate definition has the following form:
named-pred = "(" fname *pname ")" ":-" filter
fname = ftag ; Feature predicate name
pname = token ; Formal parameter name
"fname" is the name of the predicate.
"pname" is the name of a formal parameter which may appear in the
predicate body, and which is replaced by some supplied value when the
predicate is invoked.
"filter" is the predicate body. It may contain references to the
formal parameters, and may also contain references to feature tags
and other values defined in the environment in which the predicate is
invoked. References to formal parameters may appear anywhere where a
reference to a feature tag ("ftag") is permitted by the syntax for "
filter".
The only specific mechanism defined by this memo for introducing a
named predicate into a feature set definition is the "auxiliary
predicate" described later. Specific negotiating protocols or other
specifications may define other mechanisms.
NOTE: There has been some suggestion of creating a registry for
feature sets as well as individual feature values. Such a
registry might be used to introduce named predicates corresponding
to these feature sets into the environment of a capability
assertion. Further discussion of this idea is beyond the scope of
this memo.
6.1.2 Invoking named predicates
Assuming a named predicate has been introduced into the environment
of some other predicate, it can be invoked by a filter "ext-pred" of
the form:
ext-pred = fname *param
param = expr
The number of parameters must match the definition of the named
predicate that is invoked.
6.1.3 Auxiliary predicates in a filter
A auxiliary predicate is attached to a filter definition by the
following extension to the "filter" syntax:
filter =/ "(" filtercomp *( ";" parameter ) ")"
"where" 1*( named-pred ) "end"
The named predicates introduced by "named-pred" are visible from the
body of the "filtercomp" of the filter to which they are attached,
but are not visible from each other. They all have Access to the
same environment as "filter", plus their own formal parameters.
(Normal scoping rules apply: a formal parameter with the same name as
a value in the environment of "filter" effectively hides the
environment value from the body of the predicate to which it
applies.)
NOTE: Recursive predicates are not permitted. The scoping rules
should ensure this.
6.1.4 Feature matching with named predicates
The preceding procedures can be extended to deal with named
predicates simply by instantiating (i.e. substituting) the predicates
wherever they are invoked, before performing the conversion to
disjunctive normal form. In the absence of recursive predicates,
this procedure is guaranteed to terminate.
When substituting the body of a precdicate at its point of
invocation, instances of formal parameters within the predicate body
must be replaced by the corresponding actual parameter from the point
of invocation.
6.1.5 Example
This example restates that given in section 4.3 using an auxiliary
predicate named "Res":
( (& (Pix-x=1024) (Pix-y=768) (Res Res-x Res-y) )
(& (Pix-x=800) (Pix-y=600) (Res Res-x Res-y) );q=0.9
(& (Pix-x=640) (Pix-y=480) (Res Res-x Res-y) );q=0.8 )
where
(Res Res-x Res-y) :-
( (& (Res-x=150) (Res-y=150) )
(& (Res-x=150) (Res-y=300) )
(& (Res-x=300) (Res-y=300) )
(& (Res-x=300) (Res-y=600) )
(& (Res-x=600) (Res-y=600) ) )
end
Note that the formal parameters of "Res", "Res-x" and "Res-y",
prevent the body of the named predicate from referencing similarly-
named feature values.
6.2 Unit designations
In some exceptional cases, there may be differing conventions for the
units of measurement of a given feature. For example, resolution is
commonly expressed as dots per inch (dpi) or dots per centimetre
(dpcm) in different applications (e.g. printing vs faxing).
In such cases, a unit designator may be appended to a feature value
according to the conventions indicated below (see also [3]). These
considerations apply only to features with numeric values.
Every feature tag has a standard unit of measurement. Any expression
of a feature value that uses this unit is given without a unit
designation -- this is the normal case. When the feature value is
expressed in some other unit, a unit designator is appended to the
numeric feature value.
The registration of a feature tag indicates the standard unit of
measurement for a feature, and also any alternate units and
corresponding unit designators that may be used, according to RFC
2506 [3].
Thus, if the standard unit of measure for resolution is "dpcm", then
the feature predicate "(res=200)" would be used to indicate a
resolution of 200 dots-per-centimetre, and "(res=72dpi)" might be
used to indicate 72 dots-per-inch.
Unit designators are accommodated by the following extension to the
feature predicate syntax:
fvalue =/ number *WSP token
When performing feature set matching, feature comparisons with and
without unit designators, or feature comparisons with different unit
designators, are treated as if they were different features. Thus,
the feature predicate "(res=200)" would not, in general, fail to
match with the predicate "(res=200dpi)".
NOTE: A protocol processor with specific knowledge of the feature
and units concerned might recognize the relationship between the
feature predicates in the above example, and fail to match these
predicates.
This appears to be a natural behaviour in this simple example, but
can cause additional complexity in more general cases.
Accordingly, this is not considered to be required or normal
behaviour. It is presumed that an application concerned will
ensure consistent feature processing by adopting a consistent unit
for any given feature.
6.3 Unknown feature value data types
This memo has dealt with feature values that have well-understood
comparison properties: numbers, with equality, less-than, greater-
than relationships, and other values with equality relationships
only.
Some feature values may have comparison operations that are not
covered by this framework. For example, strings containing multi-
part version numbers: "x.y.z". Such feature comparisons are not
covered by this memo.
Specific applications may recognize and process feature tags that are
associated with such values. Future work may define ways to
introduce new feature value data types in a way that allows them to
be used by applications that do not contain built-in knowledge of
their properties.
7. Examples and additional comments
7.1 Worked example
This example considers sending a document to a high-end black-and-
white fax system with the following receiver capabilities:
(& (dpi=[200,300])
(grey=2) (color=0)
(image-coding=[MH,MR]) )
Turning to the document itself, assume it is available to the sender
in three possible formats, A4 high resolution, B4 low resolution and
A4 high resolution colour, described by:
(& (dpi=300)
(grey=2)
(image-coding=MR) )
(& (dpi=200)
(grey=2)
(image-coding=[MH,MMR]) )
(& (dpi=300) (dpi-xyratio=1)
(color<=256)
(image-coding=JPEG) )
These three image formats can be combined into a composite capability
statement by a logical-OR operation (to describe format-1 OR format-2
OR format-3):
( (& (dpi=300)
(grey=2)
(image-coding=MR) )
(& (dpi=200)
(grey=2)
(image-coding=[MH,MMR]) )
(& (dpi=300)
(color<=256)
(image-coding=JPEG) ) )
The composite document description can be matched with the receiver
capability description by combining the capability descriptions with
a logical AND operation:
(& (& (dpi=[200,300])
(grey=2) (color=0)
(image-coding=[MH,MR]) )
( (& (dpi=300)
(grey=2)
(image-coding=MR) )
(& (dpi=200)
(grey=2)
(image-coding=[MH,MMR]) )
(& (dpi=300)
(color<=256)
(image-coding=JPEG) ) ) )
--> Expand value-set notation:
(& (& ( (dpi=200) (dpi=300) )
(grey=2) (color=0)
( (image-coding=MH) (image-coding=MR) ) )
( (& (dpi=300)
(grey=2)
(image-coding=MR) )
(& (dpi=200)
(grey=2)
( (image-coding=MH) (image-coding=MMR) ) )
(& (dpi=300)
(color<=256)
(image-coding=JPEG) ) ) )
--> Flatten nested "(&...)":
(& ( (dpi=200) (dpi=300) )
(grey=2) (color=0)
( (image-coding=MH) (image-coding=MR) )
( (& (dpi=300)
(grey=2)
(image-coding=MR) )
(& (dpi=200)
(grey=2)
( (image-coding=MH) (image-coding=MMR) ) )
(& (dpi=300)
(color<=256)
(image-coding=JPEG) ) ) )
--> (distribute "(&...)" over inner "(...)"):
(& ( (dpi=200) (dpi=300) )
(grey=2) (color=0)
( (image-coding=MH) (image-coding=MR) )
( (& (dpi=300) (grey=2) (image-coding=MR) )
(& (dpi=200) (grey=2) (image-coding=MH) )
(& (dpi=200) (grey=2) (image-coding=MMR) )
(& (dpi=300) (color<=256) (image-coding=JPEG) ) ) )
--> continue to distribute "(&...)" over "(...)", and flattening
nested "(&...)" and "(...)" ...:
( (& (dpi=200) (grey=2) (color=0) (image-coding=MH)
( (& (dpi=300) (grey=2) (image-coding=MR) )
(& (dpi=200) (grey=2) (image-coding=MH) )
(& (dpi=200) (grey=2) (image-coding=MMR) )
(& (dpi=300) (color<=256) (image-coding=JPEG) ) ) )
(& (dpi=200) (grey=2) (color=0) (image-coding=MR)
( (& (dpi=300) (grey=2) (image-coding=MR) )
(& (dpi=200) (grey=2) (image-coding=MH) )
(& (dpi=200) (grey=2) (image-coding=MMR) )
(& (dpi=300) (color<=256) (image-coding=JPEG) ) ) )
(& (dpi=300) (grey=2) (color=0) (image-coding=MH)
( (& (dpi=300) (grey=2) (image-coding=MR) )
(& (dpi=200) (grey=2) (image-coding=MH) )
(& (dpi=200) (grey=2) (image-coding=MMR) )
(& (dpi=300) (color<=256) (image-coding=JPEG) ) ) )
(& (dpi=300) (grey=2) (color=0) (image-coding=MR)
( (& (dpi=300) (grey=2) (image-coding=MR) )
(& (dpi=200) (grey=2) (image-coding=MH) )
(& (dpi=200) (grey=2) (image-coding=MMR) )
(& (dpi=300) (color<=256) (image-coding=JPEG) ) ) ) )
--> ... until normal form is achieved:
( (& (dpi=200) (grey=2) (color=0) (image-coding=MH)
(dpi=300) (grey=2) (image-coding=MR) )
(& (dpi=200) (grey=2) (color=0) (image-coding=MR)
(dpi=300) (grey=2) (image-coding=MR) )
(& (dpi=300) (grey=2) (color=0) (image-coding=MH)
(dpi=300) (grey=2) (image-coding=MR) )
(& (dpi=300) (grey=2) (color=0) (image-coding=MR)
(dpi=300) (grey=2) (image-coding=MR) )
(& (dpi=200) (grey=2) (color=0) (image-coding=MH)
(dpi=200) (grey=2) (image-coding=MH) )
(& (dpi=200) (grey=2) (color=0) (image-coding=MR)
(dpi=200) (grey=2) (image-coding=MH) )
(& (dpi=300) (grey=2) (color=0) (image-coding=MH)
(dpi=200) (grey=2) (image-coding=MH) )
(& (dpi=300) (grey=2) (color=0) (image-coding=MR)
(dpi=200) (grey=2) (image-coding=MH) )
(& (dpi=200) (grey=2) (color=0) (image-coding=MH)
(dpi=200) (grey=2) (image-coding=MMR) )
(& (dpi=200) (grey=2) (color=0) (image-coding=MR)
(dpi=200) (grey=2) (image-coding=MMR) )
(& (dpi=300) (grey=2) (color=0) (image-coding=MH)
(dpi=200) (grey=2) (image-coding=MMR) )
(& (dpi=300) (grey=2) (color=0) (image-coding=MR)
(dpi=200) (grey=2) (image-coding=MMR) )
(& (dpi=200) (grey=2) (color=0) (image-coding=MH)
(dpi=300) (color<=256) (image-coding=JPEG) ) ) )
(& (dpi=200) (grey=2) (color=0) (image-coding=MR)
(dpi=300) (color<=256) (image-coding=JPEG) ) ) )
(& (dpi=300) (grey=2) (color=0) (image-coding=MH)
(dpi=300) (color<=256) (image-coding=JPEG) ) ) )
(& (dpi=300) (grey=2) (color=0) (image-coding=MR)
(dpi=300) (color<=256) (image-coding=JPEG) ) )
--> Group terms in each conjunction by feature tag:
( (& (dpi=200) (dpi=300) (grey=2) (grey=2) (color=0)
(image-coding=MH) (image-coding=MR) )
(& (dpi=200) (dpi=300) (grey=2) (grey=2) (color=0)
(image-coding=MR) (image-coding=MR) )
:
(etc.)
:
(& (dpi=300) (dpi=300) (grey=2) (color=0) (color<=256)
(image-coding=MR) (image-coding=JPEG) ) )
--> Combine feature tag comparisons and eliminate unsatisfiable
conjunctions:
( (& (dpi=300) (grey=2) (color=0) (image-coding=MR) )
(& (dpi=200) (grey=2) (color=0) (image-coding=MH) ) )
Thus, we see that this combination of sender and receiver options can
transfer a bi-level image, either at 300dpi using MR coding, or at
200dpi using MH coding.
Points to note about the feature matching process:
o The colour document option is eliminated because the receiver
cannot handle either colour (indicated by "(color=0)") or JPEG
coding.
o The high resolution version of the document with "(dpi=300)"
must be sent using "(image-coding=MR)" because this is the only
available coding of the image data that the receiver can use
for high resolution documents. (The available 300dpi document
codings here are MMR and MH, and the receiver capabilities are
MH and MR.)
7.2 A note on feature tag scoping
This section contains some additional commentary on the
interpretation of feture set predicates. It does not extend or
modify what has been described previously. Rather, it attempts to
clarify an area of possible misunderstanding.
The essential fact that needs to be established here is:
Within a given feature collection, each feature tag may have only
one value.
This idea is explained below in the context of using the media
feature framework to describe the characteristics of transmitted
image data.
In this context, we have the requirement that any feature tag value
must apply to the entire image, and cannot have different values for
different parts of an image. This is a consequence of the way that
the framework of feature predicates is used to describe different
possible images, such as the different images that can be rendered by
a given recipient.
This idea is illustrated here using an example of a flawed feature
set description based on the TIFF image format defined for use by
Internet fax [13]:
(& (& (MRC-mode=1) (stripe-size=256) )
( (& (image-coding=JBIG-2-LEVEL) (stripe-size=128) )
(image-coding=[MH,MR,MMR]) ) )
This example is revealing because the "stripe-size" attribute is
applied differently to different attributes on an MRC-formatted data:
it can be applied to the MRC format as a whole, and it can be applied
separately to a JBIG image that may appear as part of the MRC data.
One might imagine that this example describes a stripe size of 256
when applied to the MRC image format, and a separate stripe size of
128 when applied to a JBIG-2-LEVEL coded image within the MRC-
formatted data. But it doesn"t work that way: the predicates used
obey the normal laws of Boolean logic, and would be transformed as
follows:
--> [flatten nested (&...)]:
(& (MRC-mode=1) (stripe-size=256)
( (& (image-coding=JBIG-2-LEVEL) (stripe-size=128) )
(image-coding=[MH,MR,MMR]) ) )
--> [Distribute (&...) over (...)]:
( (& (MRC-mode=1) (stripe-size=256)
(& (image-coding=JBIG-2-LEVEL) (stripe-size=128) ) )
(& (MRC-mode=1) (stripe-size=[0..256])
(image-coding=[MH,MR,MMR]) ) )
--> [Flatten nested (&...) and group feature tags]:
( (& (MRC-mode=1)
(stripe-size=256)
(stripe-size=128)
(image-coding=JBIG-2-LEVEL) )
(& (MRC-mode=1)
(stripe-size=256)
(image-coding=[MH,MR,MMR]) ) )
Examination of this final expression shows that it requires both "
stripe-size=128" and "stripe-size=256" within the same conjunction.
This is manifestly false, so the entire conjunction must be false,
reducing the entire predicate expression to:
(& (MRC-mode=1)
(stripe-size=256)
(image-coding=[MH,MR,MMR]) ) )
This indicates that no MRC formatted data containing a JBIG-2-LEVEL
coded image is permitted within the feature set, which is not what
was intended in this case.
The only way to avoid this in situations when a given characteristic
has different constraints in different parts of a resource is to use
separate feature tags. In this example, "MRC-st