AU727627B2 - Image Interpretation Method and Apparatus - Google Patents

Image Interpretation Method and Apparatus Download PDF

Info

Publication number
AU727627B2
AU727627B2 AU89587/98A AU8958798A AU727627B2 AU 727627 B2 AU727627 B2 AU 727627B2 AU 89587/98 A AU89587/98 A AU 89587/98A AU 8958798 A AU8958798 A AU 8958798A AU 727627 B2 AU727627 B2 AU 727627B2
Authority
AU
Australia
Prior art keywords
image
recited
information
statistical
contextual information
Prior art date
Legal status (The legal status is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the status listed.)
Ceased
Application number
AU89587/98A
Other versions
AU8958798A (en
Inventor
Delphine Anh Dao Le
Alison Joan Lennon
Current Assignee (The listed assignees may be inaccurate. Google has not performed a legal analysis and makes no representation or warranty as to the accuracy of the list.)
Canon Inc
Original Assignee
Canon Inc
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Priority claimed from AUPP0096A external-priority patent/AUPP009697A0/en
Application filed by Canon Inc filed Critical Canon Inc
Priority to AU89587/98A priority Critical patent/AU727627B2/en
Publication of AU8958798A publication Critical patent/AU8958798A/en
Application granted granted Critical
Publication of AU727627B2 publication Critical patent/AU727627B2/en
Anticipated expiration legal-status Critical
Ceased legal-status Critical Current

Links

Description

I
S F Ref: 436631
AUSTRALIA
PATENTS ACT 1990 COMPLETE SPECIFICATION FOR A STANDARD PATENT
ORIGINAL
I ~C lr Name and Address of Applicant: Canon Kabushiki Kaisha 30-2, Shimomaruko 3-chome, Ohta-ku, Tokyo 146-s501
JAPAN
I' I D Canrr a &r;sntCirc Panpava h An-rQ tvA1 4.4 Ptu I :W 1 KThcC .6 Ill 1Drlv1 AUSTRA LI A VULII ~U Actual Inventor(s): Address for Service: Invention Title: Alison Joan Lennon and Delphine Anh Dao Le Spruson Ferguson, Patent Attorneys Level 33 St Martins Tower, 31 Market Street Sydney, New South Wales, 2000, Australia Image Interpretation Method and Apparatus ASSOCIATED PROVISIONAL APPLICATION DETAILS [31] Application No(s) [33] Country.
PP0096 AU PP3407 AU [32] Application Date 29 October 1997 7 May 1998 The following statement is a full description of this invention, including the best method of performing It known to me/us:- 5815 -1i- IMAGE INTERPRETATION METHOD AND APPARATUS The present invention relates to a method and apparatus for statistical analysis of images, and in particular analysis of colour images for the purpose of interpretation in terms of semantic labels. The semantic labels can subsequently be used as a basis for tasks such as content-based retrieval and content-based rendering advice.
Background to the Invention Image interpretation is the process of understanding the content of an image through identification of significant objects or regions of the image and analysis of the object's spatial arrangement. Traditionally the task of image interpretation required human analysis. This is expensive and time consuming, consequently considerable research has been directed towards constructing automated image interpretation systems.
*Most existing image interpretation systems involve low-level and high-level processing. Typically, low-level processing involves the transformation of an image from an array of pixel intensities to a set of spatially related image primitives, such as edges and regions. Various features can then be extracted from the primitives (eg., average pixel intensities). In high-level processing, image domain knowledge and feature measurements are used to assign object or region labels, or interpretations, to the primitives and hence construct a description as to "what is present in the image".
'Early attempts at image interpretation were based on classifying isolated primitives into a finite number of object classes according to their feature measurements. The success of this approach has been limited by erroneous or incomplete results that often arose from low-level processing and feature measurement errors due to the presence of noise in the image. Most recent techniques incorporate spatial constraints in the high-level processing. This allows ambiguous regions or objects of an image to be identified as the result of successful recognition of neighbouring regions or objects.
CFP1023AU MMedia03 436631 [O:\CISRA\MMEDIA\MMEDIA031436631 :IAD More recently, the spatial dependence of region labels for an image has been modelled using statistical methods, such as Markov Random Fields (MRF). An advantage of the MRF model is that it provides a general and natural model for the interaction between spatially related random variables, and there are relatively flexible optimization algorithms that can be used to find the (globally) optimal realisation of the field. Typically, the MRF is defined on a set of preliminary segmented regions which have been obtained by one of many available region-based image segmentation methods.
The MRF model provides a powerful mechanism for incorporating knowledge about the spatial dependence of semantic labels with the dependence of the labels on measurements (low-level features) from an image.
However, although statistical models, such as MRFs, potentially provide a general, domain-independent approach to image interpretation, initial results are still limited to relatively narrow application domains because of the ill-posed nature of the problem of image interpretation. That is, the nature of the problem of image S 15 interpretation is that while a solution to a particular interpretation of an image may exist, the solution may not be unique and/or the solution does not necessarily continuously vary with perturbations of the image data. For example, the non-unique nature of the solution to a particular image interpretation provides an undesirable level of ambiguity.
Therefore, a need clearly exists for a statistical image interpretation process (or processes) that reduces the level of ambiguity and thus improves both the performance of :•and level of accuracy in identifying and labelling image regions or image objects.
Summary In accordance with a first aspect of the invention, there is provided a method of interpreting an image using a statistical or probabilistic interpretation model, the image having associated therewith contextual information, said method comprising the steps of: providing the contextual information associated with the image for analysis; analysing the contextual information to identify predetermined features relating to the image; and 436631AU.DOC biasing the statistical or probabilistic interpretation model in accordance with the identified features.
In accordance with a second aspect of the present invention, there is provided a method of interpreting an image using a statistical or probabilistic interpretation model to identify at least one object in the image, the image having associated therewith contextual information, said method comprising the steps of: providing contextual information associated with the image for analysis; analysing the contextual information to identify predetermined features relating to the image associated with the contextual information; biasing the statistical or probabilistic interpretation model in accordance with the identified features; analysing the image in accordance with the biasing statistical or probabilistic interpretation model; and i providing metadata identifying or describing the at least one object in the image.
In accordance with a third aspect of the present invention, there is provided an image interpretation system for identifying at least one object of an image, the image comprising a plurality of objects, the system comprising: input means for inputting image data and associated contextual information; analysing means for analysing the contextual information to identify 20 predetermined features of the information; .**parameter adjusting means for biasing a statistical or probabilistic interpretation model in accordance with the identified predetermined features; and image data analysing means based on the biased statistical or probabilistic interpretation model for identifying at least one object in the image.
In accordance with a fourth aspect of the present invention, there is provided a computer readable medium including instruction modules arranged to identify at least one object in an image, said modules comprising: an analysing module provided for identifying from the contextual information redetermined features relating to the image; 436631AU.DOC -4a biasing module for altering a statistical or probabilistic interpretation model in accordance with the identified features; an image analysing module for identifying in accordance with the biasing.
statistical or probabilistic interpretation model objects of the image.
Brief description of the Drawings Embodiments of the present invention are described hereinafter with reference to the drawings, in which: Fig. 1 is a flow diagram illustrating a process of interpreting image data according to a first embodiment of the invention; Fig. 2 is a flow diagram illustrating a process of interpreting image data according to a second embodiment; Fig. 3 is a block diagram illustrating a contextual analyser in accordance with the •embodiments of the present invention; Fig. 4 is a representation an image divided into a plurality of image regions in accordance with the first embodiment; Fig. 5 is an example of a region adjacency graph associated with the image region divisions of Fig. 4;, Fig. 6 represents a set of associated cliques for the region adjacency graph of Fig and Fig. 7 is a block diagram of a general purpose computer with which the embodiments of the invention may be practised.
Detailed Description •too In the embodiments of the invention, additional contextual information (ie., information in addition to (colour) image information) is used to improve the 436631AU.DOC performance of statistical-model-based image interpretation systems. The additional contextual information may include information extracted from an audio channel recorded with the colour image in a digital camera), environment information GPS coordinates from a camera), and/or spectral information infrared analysis of the image). This additional contextual information can be used in the image interpretation system in two ways: to select an appropriate application domain for the analysis where multiple application domains are available to an image interpretation system; and/or to adjust the prior probabilities of labels in the selected or a predetermined application domain. For example, additional contextual information io such as an audio cue that is interpreted to be "Smile, Granny" can be used to imply that an application domain involving people was required, or that the probability of a "person" label in the current application domain is high. Labels include semantic (labels) expressions or words that describe objects or regions of an image (eg. sky, beach, person, foliage, water, land, etc.).
S* 15 So as not to unduly obscure the present invention, the embodiments are described with reference to a statistical Image Interpretation System designed. for images captured using a digital camera that permits an optional recording of additional contextual information which is associated with each captured image. The additional contextual information, for the purpose of describing this embodiment, is considered to 20 be audio information. However, other forms of contextual information may be used without departing from the scope and spirit ofthe invention. The audio information remains associated with each captured image upon transfer of data (audio and image) from the camera to the Image Interpretation System. For example, the Image Interpretation System may be implemented using a general purpose computer, adapted to receive such data, having and executing software for interpreting an image portion of the received data into a plurality of regions, of which preferably at least one region is identified and labelled.
In a variation of this embodiment, the Image Interpretation System may be located in a digital camera. An image downloaded from the digital camera is associated CFP1023AU MMedia03 436631 [O:\CISRA\MMEDIA\MMEDIA031436631:lAD -6with metadata comprising labels describing various regions (or objects), and information about their arrangement.
Process of First Embodiment The first embodiment can be described with single or multiple application domains. In general, an application domain comprises a knowledge base and functionality required to label a predetermined type of image. For example, a single, quite general, application domain, such as "Rural Outdoor Scene", can include the knowledge and functionality'to label image regions such as sky, foliage, water bodies (lakes, ocean, river), road, building and .people. An Image Interpretation System comprising a single application domain is shown in Figure 1.
More sophisticated Image Interpretation Systems may be able to invoke at least one of several application domains. For example, an Image Interpretation System can select at least one application domain from a set consisting of Rural Outdoor Scenes, "Urban Outdoor Scenes, Sporting Scenes and People Scenes. In an Image Interpretation 15 System where multiple application domains are available, one domain is registered as a default domain. Contextual information, preferably gathered from a plurality of input sources and analysed in accordance with the preferred embodiment may be used to 004 select an appropriate application domain for a particular image interpretation problem.
The single domain can be selected, for instance, from an Application Domain Database 20 511 in Fig. 2.
Fig 1 provides an overview of the typical steps of the first embodiment, in which raw data 500 comprising image pixel data pixel intensities for a multiplicity of colour channels, eg., red, green and blue) and associated audio information is transferred from a camera to the Image Interpretation System. The additional contextual information in this case is an audio stream, which is analysed 501 by a contextual analyser. Under circumstances where the additional contextual information is derived from a plurality of sources,,the contextual analyser may include more than one contextual analysing unit. For example, if the camera optionally records audio information, Global Positioning System (GPS) coordinates and infrared activity of a CFP1023AU MMedia03 436631 [O:\CISRA\MMEDIA\MMEDIA031436631:IAD -7scene captured by the camera, the contextual analyser may include an audio analysing unit, a GPS analysing unit and an infrared analysing, unit. The contextual analyser is used to alter the prior probabilities of region labels in the application domain to bias the labelling of an image towards objects or regions of an image likely to be present.
In step 501, a contextual analyser (in this example,. including an audio analysing unit) is used to recognise key words or phrases in the audio stream (information) and check whether these key words/phrases suggest, that a particular label is more likely to occur in the image than another label. Following step 501, image processing continues at step 504, while the contextual information is used at steps 502 or 503. A list 502 of predetermined key words and phrases is provided for preferably each label of an application domain. In the first embodiment, with a single application domain, the prior probabilities for labels may be adjusted on the basis of the list of key words/phrases 502 being stored for each label in the application domain with a prior probability weighting factor for each key word/phrase in the list 502. Typically, the P 15 higher the probability weighting factor the more likely that a region of an image, *described by a predetermined label, is present or exists in the image. In an Image Interpretation System having multiple application domains, each application domain could contain a list of key words/phrases that is associated with the domain. Further, each label of an application domain can contain or be associated with a substantially similar list of key words/phrases that can-be substantially similar or different to the key words/phrases associated with the application domain. If so, the audio information (ie.
contextual) is used to select the application domain to be used in the analysis and, if required, bias each label in accordance with the resultant analysis of the audio information as previously described with reference to the single application domain., The contextual information associated with an image need not be of the form of audio information or infrared (spectral) information. For example, textual annotations, phrases or keywords that are associated with an image can be used.
Images with such associated textual annotations, phrases or keywords may result, for instance, from a database of images have associated information for each image. This CFP1023AU MMediaO3 436631 [IO:\CISRA\MMEDIA\MMEDIA031436631 :lAD form of annotated text can be used in a Image Interpretation System and analysed as a source of contextual information.
The contextual analyser, upon consulting the key word and phrase list 502, adjusts weight probabilities of labels of a predetermined application domain in step 503 in accordance with a likelihood that one or more labels represent a region or object of an image. For example, if an image gathered by a digital still (or video) camera is of the sun going down on the horizon, key words extracted 'from audio information recorded and associated with the image may include the word "sunset". If so, the likelihood that the image is an outdoor scene and includes a "sun" is very probable.
Therefore, in accordance with the first embodiment, in an application domain of 'Outdoor Scenes", a label representing the "sun" is given a greater weight probability than it would have if the key word sunset was not identified from the audio information. The weight probability of each label of an application domain is typically ,,,set to a default value at an initial step in the Image Interpretation System and altered according to the results of the contextual analyser.
The weight probability of each label of an application domain is preferably stored with each corresponding label of the domain in step 507. Further, where the contextual analyser can directly influence the weight probability of a label without recourse to the key word/ phrase list 502, that is, the contextual analyser performs S 20 analysis, other than audio analysis not requiring a key word/ phrase list 502 search, the contextual analyser can directly alter the probability of the weights as indicated by flow arrow 523 of Fig. 3 accordingly. An example, of an instance where the contextual analyser need not require the key word/phrase list 502 is where contextual information is derived from an infrared detector unit 522.
Following step 501, the image is segmented into homogeneous regions by an image segmenter, 504, using a region-based segmentation method. Known region segmentation methods include segmentation algorithms which use Markov Random Field models for colour and/or textures. The segmentation algorithms typically comprise dividing the image into clusters of pixels and applying a merging process to CFP1023AU MMedia03 436631 [O:\ClSRA\MMEDIA\MMEDIA031436631 :lAD similar adjacent pixel clusters, to a predetermined optimum level, to divide or segment an image at edges or boundaries of graphical objects of the image. Image segmentation methods other than those utilising an MRF model on the pixel array as described hereinafter can be substituted without departing from the scope and spirit of the invention. However, it is preferred that an image segmentation process that segments the image based on texture and colour be used.
A result of the segmentation process in step 504 is a Region Adjacency Graph (RAG) 505 which is defined to be a graph G which contains a set R of disjoint regions and a set E of edges connecting the regions, ie., G An example of a segmented image and a corresponding RAG is described hereinafter with reference to Figs. 4 and *.0 0 0 0 In step 506, the Image Analyser, preferably, analyses and optimally labels each S:region represented by the RAG using the predetermined labels and corresponding '."weight probabilities of the application domain previously stored in step 507. The Image Analyser outputs a labelled RAG, or metadata 508, representing a description of the content of the image that can be used for higher-level processes such as contentbased retrieval. Preferably the Image Analyser uses an MRF (statistical) model to perform the analyses and labelling.
.•eo•i However, other statistical models may be used that directly or indirectly rely o o. 1% e 20 on probabilistic methods of labelling regions of an image based on properties of a region and properties of predetermined neighbouring regions used. For example, a, neural network approach may be used. Typical properties of a region in an image can include feature measurements of the region or predetermined knowledge.
Process of Second Embodiment Fig. 2 is a flow diagram of a second embodiment where multiple application domains are used. The description of Fig. 2 is substantially similar to that of Fig. 1, except that step 503 is replaced with step 510 in which the contextual analyser now selects an application domain from a database 511 of application domains. A set of labels and their corresponding weight probabilities associated with the selected domain CFP1023AU MMedia03 436631 [O:\CISRA\MMEDIA\MMEDIA031436631 :lAD is then stored in step 507 on a memory storage device for use by the image analyser 506. Preferably, in addition to selecting the application domain, the contextual analyser further alters the corresponding weight probabilities associated with the selected domain as described with reference to Fig. 1.
Contextual Analyser Fig. 3 shows in more detail the contextual analyser 501 of Fig. 1 and Fig. 2.
Contextual information 500, associated with predetermined image data, comprising an audio stream, GPS coordinate information, infrared spectral details is input to the contextual analyser 501. The contextual analyser 501 preferably comprises. a plurality of analysing units 520 to 522, each unit capable of analysing at least one type of information that forms part of the contextual information. For example, at least three analysing units are shown in Fig. 3. The three units 520, 521 and 522 are provided for each type of contextual information to be analysed: an audio analysing unit 520 for the audio information; a GPS analysing unit 521 for analysing the GPS information; and an infrared analysing unit 522 provided for analysing infrared spectral information captured and associated with the image.
The audio analysing unit 520 utilises a key word/ phrase list 502 to determine whether weight probabilities of predetermined labels in a Specified application domain are to be modified (biased), by an adjusting unit 503, in accordance with a likelihood of 20 finding an object or region of an image corresponding to a predetermined label. The S.i weight probabilities are stored, preferably in memory 507, and associated with the corresponding labels.
The process of image interpretation is described hereinafter with reference to Figs. 4 to 6 as one of optimal labelling of the regions in the graph G. If the application domain consists of a set of p labels, L {L 1
L
2
L
3 Lp} with prior probabilities, PrL {PrL1, PrL 2 PrL 3 PrLp}, that have been refined by the contextual information, the interpretation process can be viewed as one of estimating the most probable set of labels on the G.
CFP1023AU MMedia03 436631 [O:\CISRA\MMEDIA\MMEDIA031436631
:IAD
S-11- Suppose that the G consists of N disjoint regions, then let X {X 1
X
2
X
3 XN} be a family of random variables on the RAG. Then X is a random field, where
X
i is the random variable associated with R i and the realisation of X i and xi, is a member of the set of labels, L. Suppose also that there exists a neighbourhood system on G denoted by: F= 1 i (1) where n(R) is a set of regions in R that are neighbours of Ri. In the first embodiment of the present invention, a neighbourhood system for a region, Ri, is that region and all other regions that have some common boundary with R i The regions R i are shown in Fig. 4, that is R 1 representing a "sky" region, R 2 representing a portion of a "field" region, etc.
Let Q denote the set of all possible labelling configurations and let C denote a 15 configuration in Q: S= {c {X1, X 2
X
3 xi L, 1 i N Then X is MRF with respect to F if, 20 P((X o) for all realisations of X; P(Xi x i lXj xj, Rj Ri) P(X i xilXj x, Rj e (2) A desirable feature of the MRF is that its joint probability density function, P(X has a Gibbs distribution, ie., P((X co) (3) where T is the temperature, U(co) is the Gibbs' energy function and Z is the partition function: CFP1023AU MMedia03 436631 [O:\CISRA\MMEDIA\MMEDIA03]436631 :IAD -12- Z= -exp[-U((o (4) (0 The Gibbs energy function can be expressed using the concept of cliques, where a clique c associated with G is a subset of R such that it contains either a single node or several nodes that are all neighbours of each other. Cliques associated with each node of the RAG of Fig 5, and accordingly each region of Fig. 4, are shown in Fig. 6. For example, cliques shown in Fig 6 associated with node R4, that is, associated cliques {R4,R5}, {R4,R6}, {R4,R7}, {R4,R8} are representative of the regions of the image of Fig. 4 adjacent to region R4. Note, that clique {R3,R4}, for example, has been considered in the list associated with R3. Let C denote the set of cliques for G. A clique function, Vc, is a function with the property that Vc(Co) depends on the x i values (labels) for which (i e Lower case letter denote a clique belonging to the set of cliques. A family of clique functions is referred to as a 15 potential The potential can be obtained by summing over clique functions for c belonging to set C for G: EV,O). "o 'C eC 20 Region-based feature measurements obtained from the image and prior knowledge are incorporated into the clique functions. The likelihood of a particular region label given a set of region feature measurements can be estimated using various methods which may involve the use of a training set (which may, for example, be used to train a neural network) or may be based on empirical knowledge. Similarly, prior knowledge can be incorporated into the clique functions in the form of constraints that may or may not be measurement-based. For example, the constraints may be of the form that label L i and L cannot be adjacent have zero probability of being neighbours), or if L i and L are adjacent, the boundary is likely to have certain CFP1023AU MMedia03 436631 [O:\CISRA\MMEDIA\MMEDIA031436631:IAD -13characteristics fractal dimension). Minimising the Gibbs energy of Equations 3 to results in a maximisation of the joint probability density function, P(X c).
In the first embodiment, finding an optimum region label configuration for a RAG given predetermined measurements obtained from an image M and knowledge K (the knowledge being incorporated into corresponding clique functions) and a plurality of prior probabilities for predetermined labels in an application domain, Pr (which have been refined by analysis of contextual information) can be viewed as optimising a predetermined label at a site, i, since the labelling of a region depends substantially on a neighbourhood region (a property of MRF). The knowledge K is given by predetermined known conditions of desirable outcomes associated with a particular application domain and can easily be incorporated into clique functions as a predetermined weight probability. For example, if a "Rural Outdoor scene" application domain is to be used to label regions (objects) of an image, it is likely that a region "sun" is near a region "sky" and unlikely that an object "car" is located above a region 15 "water" and therefore knowledge of these predetermined conditions can be factored into the clique functions involving the regions. In this manner, the dependence of a label at region i on M and K is incorporated into the design clique functions, therefore the conditional probability density function for X i being x i at site i can be written as: S. 20 P(X i xi X, M,K, Pr)= Ziexp Pr, and (6) Zi Z exp V x) xeL c, where o x denotes the configuration which is x at site i and agrees with co elsewhere. Further the summation over c i in Equation indicates a summation over all cliques including site i.
Using Equation for selecting a most probable label at a site is substantially equivalent to minimising a weighted (by prior probability of the label) Gibbs energy CFP1023AU MMedia03 436631 [O:\CISRA\MMEDIA\MMEDIA031436631
:MXL
-14function at the site. The optimum region label configuration for the image can be obtained by iteratively visiting each of the N sites on G and updating a label at each site. There are several known methods by which region labels can be updated. For example, a new label is selected for a region from either a uniform distribution of the labels or from the conditional probability distribution of the labels on the MRF by a Gibbs Sampler). An iterative procedure of visiting and updating sites can be implemented within a simulated annealing scheme (where the temperature is gradually decreased), or if more rapid convergence is desirable, then the iterated conditional modes (ICM) method can be used. In the latter method (ie. ICM), sites on the RAG are iteratively visited and at each site, the label of the region is updated to be the label that is most probable. A method of update other than the methods indicated above can be used to update the region labels without departing from the scope and spirit of the present invention.
The embodiments of the invention can also be practised using a conventional general-purpose computer, such as that shown in Fig. 7, wherein the process described with reference to Figs. 1 to 6 is implemented as software executed on the computer.
The computer system 700 includes the computer 701, input devices 702, 703 and a •go.
display device 704.
The computer 701 comprises at least one processor unit 705, a memory unit 20 706 which typically include random access memory (RAM) and read only memory (ROM), input/output interfaces including a video interface 707, keyboard and mouse interface 708 and an I/O interface 710 for downloading from a camera unit 711.
The storage device 709 can include one or more of the following devices: a floppy disk, a hard disk drive, a CD-ROM drive, magnetic tape drive or similar a non-volatile storage device known to those skilled in the art. The components 705 to 709 of the computer 701 typically communicate via an interconnected bus and in a manner which results in a usual mode of operation of the computer system 700 known to those in the relevant art. Examples of computer systems on which the embodiments can be CFP1023AU MMedia03 436631 [O:\CISRA\MMEDIA\MMEDIA031436631 :lAD practised include IBM-PC/ATs and compatibles, -Sun Sparcstations or alike computer system.
The camera unit 711 is capable of recording a still image into storage (eg.
memory) and additional information, for instance, a sound cue or infrared data that is associated with the still image also recorded. Both the image data and the associated additional (contextual) information are downloaded to the computer where the interpretation and labelling is performed in accordance with the embodiment hereinbefore described.
The foregoing describes a small number of embodiments of the present invention, and modifications, obvious to those skilled in the art can be made thereto without departing from the spirit and scope of the present invention. For example, the image segmentation process and region labelling process can be combined together, and preferably a single minimisation process applied.
CFP1023AU MMedia03 436631 [O:\CISRA\MMEDIA\MMEDIA031436631:IAD

Claims (34)

1. A method of interpreting an image using a statistical or probabilistic interpretation model, the image having associated therewith contextual information, said method comprising the steps of: providing the contextual information associated with the image for analysis; analysing the contextual information to identify predetermined features relating to the image; and biasing the statistical or probabilistic interpretation model in accordance with the identified features.
2. The method as recited in claim 1, further including the step of: interpreting the image in accordance with the biased statistical or probabilistic interpretation model.
3. The method as recited in claim 2, further including the step of: providing metadata describing at least a portion of said image.
4. The method as recited in claim 3, wherein said metadata includes labels describing at least a portion of the content of the image data.
5. The method as recited in claim 3, wherein said metadata is an encoded representation providing information of the content of at least a portion of the content of the image data. oo:
6. The method as recited in claim 4, wherein said metadata includes information on an adjacency of regions of the image data.
7. The method as recited in claim 3, wherein said metadata is labelled Region Adjacency Graph (RAG).
8. The method as recited in any one of claims 2 to 6, wherein said metadata is associated with the image data.
9. The method as recited in claim 1, wherein the contextual information is derived from a plurality of separate sources of information.
The method as recited in claim 1 or 6, wherein the contextual information originated from at least one of the following sources of information: 436631AU.DOC -17- audio information; electromagnetic spectral information; environmental information; time lapse or sequential image information; and textual annotation, phrases or keywords associated with the image.
11. The method as recited in claim 1, wherein the biasing step includes selecting a predetermined application domain from a plurality of application domains based on the features identified.
12. The method as recited in claim 1, wherein the biasing step comprises biasing a probability value of at least one label associated with a predetermined application domain.
13. A method of interpreting an image using a statistical or probabilistic interpretation model to identify at least one object in the image, the image having associated therewith contextual information, said method comprising the steps of: providing contextual information associated with the image for analysis; analysing the contextual information to identify predetermined features relating to the image associated with the contextual information; 20 biasing the statistical or probabilistic interpretation model in accordance with the identified features; analysing the image in accordance with the biasing statistical or probabilistic interpretation model; and providing metadata identifying or describing the at least one object in the image.
14. The method as recited in any one of the preceding claims, wherein the statistical or probabilistic interpretation model is a Markov Random Field Model.
15. An image interpretation system for identifying at least one object of an image, 30 the image comprising a plurality of objects, the system comprising: input means for inputting image data and associated contextual information; analysing means for analysing the contextual information to identify predetermined features of the information; parameter adjusting means for biasing a statistical or probabilistic interpretation model in accordance with the identified predetermined features; and image data analysing means based on the biased statistical or probabilistic interpretation model for identifying at least one object in the image. 436631AU.DOC -18-
16. The image interpretation system recited in claim 15, further comprising labelling means for providing semantic labels for each object identified.
17. A computer readable medium including instruction modules arranged to identify at least one object in an image, said modules comprising: an analysing module provided for identifying from the contextual information predetermined features relating to the image; a biasing module for altering a statistical or probabilistic interpretation model in accordance with the identified features; an image analysing module for identifying in accordance with the biasing statistical or probabilistic interpretation model objects of the image.
18. The computer readable medium recited in claim 17, further including a labelling module for providing metadata describing the identified objects of the image.
19. An apparatus for interpreting an image using a statistical or probabilistic interpretation model, the image having associated therewith contextual information, said apparatus comprising: analysis;means for providing the contextual information associated with the image for analysis; *means for analysing the contextual information to identify predetermined S• features relating to the image; and means for biasing the statistical or probabilistic interpretation model in ooo• accordance with the identified features. ego ooo:
20. The apparatus as recited in claim 19, further including: means for interpreting the image in accordance with the biased statistical or probabilistic interpretation model. •go
21. The apparatus as recited in claim 20, further including: means for providing metadata describing at least a portion of said image.
22. The apparatus as recited in claim 21, wherein said metadata includes labels describing at least a portion of the content of the image data.
23. The apparatus as recited in claim 21, wherein said metadata is an encoded representation providing information of the content of at least a portion of the content of Sthe image data. 436631AU.DOC -19-
24. The apparatus as recited in claim 22, wherein said metadata includes information on an adjacency of regions of the image data.
The apparatus as recited in claim 21, wherein said metadata is a labelled Region Adjacency Graph (RAG).
26. The apparatus as recited in any one of claims 21 to 25, wherein said metadata is associated with the image data.
27. The apparatus as recited in claim 19, wherein the contextual information is derived from a plurality of separate sources of information.
28. The apparatus as recited in claim 19 or 24, wherein the contextual information originated from at least one of the following sources of information: audio information; electromagnetic spectral information; environmental information; time lapse or sequential image information; and textual annotation, phrases or keywords associated with the image.
.29. The apparatus as recited in claim 19, wherein the means for biasing includes a means for selecting a predetermined application domain from a plurality of application domains based on the features identified. 0000 25
30. The apparatus as recited in claim 19, wherein the means for biasing comprises means for biasing a probability value of at least one label associated with a predetermined •re application domain.
S31. An apparatus for interpreting an image using a statistical or probabilistic 30 interpretation model to identify at least one object in the image, the image having associated therewith contextual information, said apparatus comprising: means for providing contextual information associated with the image for analysis; means for analysing the contextual information to identify predetermined features relating to the image associated with the contextual information; means for biasing the statistical or probabilistic interpretation model in accordance with the identified features; means for analysing the image in accordance with the biasing statistical or robabilistic interpretation model; and 436631AU.DOC means for providing metadata identifying or describing the at least one object in the image.
32. The apparatus as recited in any one of claims 19 to 31, wherein the statistical or probabilistic interpretation model is a Markov Random Field Model.
33. A method of interpreting an image using a statistical or probabilistic interpretation model, the image having associated therewith contextual information, substantially as herein described with reference to any one of the embodiments as illustrated in the accompanying drawings.
34. An apparatus for interpreting an image using a statistical or probabilistic interpretation model, the image having associated therewith contextual information, substantially as herein described with reference to any one of the embodiments as illustrated in the accompanying drawings. S. DATED this fourth Day of October, 2000 Canon Kabushiki Kaisha Canon Information Systems Research Australia Pty Ltd Patent Attorneys for the Applicants SPRUSON FERGUSON *.o S o 436631AU.DOC
AU89587/98A 1997-10-29 1998-10-28 Image Interpretation Method and Apparatus Ceased AU727627B2 (en)

Priority Applications (1)

Application Number Priority Date Filing Date Title
AU89587/98A AU727627B2 (en) 1997-10-29 1998-10-28 Image Interpretation Method and Apparatus

Applications Claiming Priority (3)

Application Number Priority Date Filing Date Title
AUPP0096A AUPP009697A0 (en) 1997-10-29 1997-10-29 Image interpretation method and apparatas
AUPP0096 1997-10-29
AU89587/98A AU727627B2 (en) 1997-10-29 1998-10-28 Image Interpretation Method and Apparatus

Publications (2)

Publication Number Publication Date
AU8958798A AU8958798A (en) 1999-05-20
AU727627B2 true AU727627B2 (en) 2000-12-14

Family

ID=25641213

Family Applications (1)

Application Number Title Priority Date Filing Date
AU89587/98A Ceased AU727627B2 (en) 1997-10-29 1998-10-28 Image Interpretation Method and Apparatus

Country Status (1)

Country Link
AU (1) AU727627B2 (en)

Families Citing this family (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN110147878B (en) * 2018-11-28 2023-01-31 腾讯科技(深圳)有限公司 Data processing method, device and equipment

Citations (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US5828809A (en) * 1996-10-01 1998-10-27 Matsushita Electric Industrial Co., Ltd. Method and apparatus for extracting indexing information from digital video data

Patent Citations (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US5828809A (en) * 1996-10-01 1998-10-27 Matsushita Electric Industrial Co., Ltd. Method and apparatus for extracting indexing information from digital video data

Also Published As

Publication number Publication date
AU8958798A (en) 1999-05-20

Similar Documents

Publication Publication Date Title
US6922489B2 (en) Image interpretation method and apparatus
US7065250B1 (en) Automated image interpretation and retrieval system
US6718063B1 (en) Method and apparatus for computing the similarity between images
CN111461258B (en) Remote sensing image scene classification method of coupling convolution neural network and graph convolution network
JP4447689B2 (en) Automatic video interpretation system
CN114067160B (en) Small sample remote sensing image scene classification method based on embedded smooth graph neural network
CN111598174B (en) Model training method based on semi-supervised antagonistic learning and image change analysis method
CN113780296B (en) Remote sensing image semantic segmentation method and system based on multi-scale information fusion
Liu et al. Super-pixel cloud detection using hierarchical fusion CNN
US20220215656A1 (en) Method, apparatus, device for image processing, and storage medium
CN113780149A (en) Method for efficiently extracting building target of remote sensing image based on attention mechanism
Sumbul et al. Informative and representative triplet selection for multilabel remote sensing image retrieval
CN112232371A (en) American license plate recognition method based on YOLOv3 and text recognition
CN115471739A (en) Cross-domain remote sensing scene classification and retrieval method based on self-supervision contrast learning
Peters et al. A new biogeographic regionalisation for Tasmania
Neal et al. Census-independent population estimation using representation learning
AU727627B2 (en) Image Interpretation Method and Apparatus
Varlik et al. Filtering airborne LIDAR data by using fully convolutional networks
Sankaranarayanan et al. Pre-processing framework with virtual mono-layer sequence of boxes for video based vehicle detection applications
CN115797904A (en) Active learning method for multiple scenes and multiple tasks in intelligent driving visual perception
CN111738201B (en) Method and system for extracting remote sensing image of woodland based on region-of-interest network
Anilkumar et al. An improved beluga whale optimizer—Derived Adaptive multi-channel DeepLabv3+ for semantic segmentation of aerial images
CN114743109A (en) Multi-model collaborative optimization high-resolution remote sensing image semi-supervised change detection method and system
AU740614B2 (en) Automated video interpretation system
AU745932B2 (en) Method and apparatus for computing the similarity between images

Legal Events

Date Code Title Description
PC1 Assignment before grant (sect. 113)

Owner name: CANON KABUSHIKI KAISHA

Free format text: THE FORMER OWNER WAS: CANON KABUSHIKI KAISHA, CANON INFORMATION SYSTEMS RESEARCH AUSTRALIA PTY LTD

FGA Letters patent sealed or granted (standard patent)