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Proceedings of the 26th Chinese Control Conference July 26-31, 2007, Zhangjiajie, Hunan, China The Frame of Cognitive Pattern Recognition Pi Youguo1, Shu Huailin2, Liang Tiancai1 1. College of Automatic Science & Engineering, South China University of Technology, Guangzhou 510641, P.R.China E-mail: [email protected] 2. College of Information, Guang Zhou University , Guangzhou 510091, P.R.China E-mail: [email protected] Abstract: Cognitive pattern recognition has two basic research problem , one is to understand principle of human pattern recognition, and the other is to develop computer recognition system which has certain learning ability and adaptive ability based on principle of human pattern recognition. Some achievement of pattern recognition in cognitive science was present , the frame of tradition machine pattern recognition was described. How to apply achievement of cognitive science to traditional machine pattern recognition by combining with characteristic of machine pattern recognition was discussed. Recognition of printed digit character was performed according to frame of cognitive pattern recognition, and the frame is supported by the result of experiment. Key Words: cognitive system; architecture; pattern recognition time. Pattern recognition confirm certain pattern and distinguish others patterns. Cognitive psychology define recognition of exterior object acting on human as pattern recognition, which match input-information with information of long term memory, then make decision about how to classify input-information into certain known pattern[4]. The whole process of pattern recognition include a series of step, sense, analysis, comparer, decision-making, output, and so on. As for some pattern which could not be found in long term memory, the result of decision-making will be unknown, but tutor may help process of pattern recognition learn new knowledge and add new pattern into long term memory. 1 INTRODUCTION Human being capture outer pattern by sensor organ and perform recognition of the outer world by a series of brain cognitive process. Pattern recognition is a basic brain function for human beings, its research includes: how the brain recognizes an object, and how human beings perform pattern recognition for given assignment. The former belongs to cognitive science, and the latter belongs to information science. Property of subject result in that cognitive science and informational science had to be interdisciplinary collaboration in research. However, cognitive science and informational science were founded at about the same period, cognitive psychology was founded in the 1950s[1], informational science was founded in the 1960s. Machine Pattern Recognition did not benefit much from cognitive psychology. After development of half century , cognitive science had made great progress in perceptive understanding, and method of apperception, utilization of wholes and parts, theory of templates and prototypes, characteristic matching model, memory, and objective background[2]. Although there are some disputation in cognitive science, which did not prevent us from building the model of machine pattern recognition basing on cognitive science, or perform pattern recognition with breakthroughs of cognitive science[3] . Therefore, cognitive science will contribute to the development of machine pattern recognition. This paper is organized as follows. the major achievement of pattern recognition in cognitive psychology is discussed in Section 2, the model of traditional pattern recognition is described Section 3, the model of cognitive pattern recognition is presented Section 4, and the conclusions is at the end of paper. 2.1 Matching Cognitive psychology has three major matching theory, template matching theory, prototype matching theory, feature matching theory. Template matching theory point out that mini copy of all kinds of patterns, that is template, was stored in human long term memory. All template corresponding to exterior simulation one by one. When one simulation act on sensory organ, brain will translate stimulative information into coding and compared stimulative information with template in long term memory, then make decision about which template will be optimum matching for stimulative information. Prototype theory think that prototype but not template which corresponding to exterior pattern one by one was stored in long term memory, any complicated pattern was made up of prototype. When one stimulation act on sensory organ, brain will split stimulative information into prototype coding and match with prototype which was stored in long term memory. Feature theory believe that pattern was made up of some elements or component according to certain principle. All elements or components and their relationship was called feature. Exterior stimulation consist of some distinguishable and independent feature, so recognition may be performed by matching exterior 2 THE MAJOR ACHIEVEMENT OF RECOGNITION IN COGNITIVE PSYCHOLOGY Pattern refer to combination of stimulation in space and 694 Authorized licensed use limited to: GUILIN UNIVERSITY OF ELECTRONIC TECHNOLOGY. Downloaded on October 4, 2008 at 22:53 from IEEE Xplore. Restrictions apply. fall into two basic method: statistical pattern recognition and syntax pattern recognition. Syntax pattern recognition based on characteristic of graphic structure, accomplish work according to tree information of subschema. Some research indicated that the nondirectional chain code of beeline is not context-irrespective language[3]. The native syntax method has defect in recognition because of the difficult on linguistic analysis of context-irrespective language. Statistical Pattern Recognition based on class probability density function of sample in feature space, combine Bayes decision-making system to practice pattern recognition. It is also called decision-making recognition method[4]. As far as technology concerned, the whole process of machine pattern recognition need to pass through pattern space, feature space and style space. From above procedure, which can be conclude that machine pattern recognition fall into three steps(as in Fig.1): pattern collection, feature extraction , pattern classification. stimulation with feature stored in long term memory. 2.2 Perception and its Processing Way Cognitive procedure include information-getting and information-processing. Cognitive psychology regard a great deal cognitive procedure as perceptional procedure. Perceptional procedure receive sensory input and translate sensory input into abstract coding with two processing way, from top to bottom and from bottom to top[1]. From bottom to top emphasize that exterior stimulation is the source of process. From top to bottom emphasize that certain knowledge produce perceptional process. The former was called data driver process, the later was called conception driver process. The another important problem of perceptional procedure is the relation between the whole and the part. In 1977, Navon, based on his research, pointed out that perception of whole feature faster than partial feature, at the same time, partial feature did not work on perceptional process when somebody paid attention to whole feature consciously. However, people had to perceive whole feature before he or she paid attention to partial feature. Therefore, the sequence of perceptional process is whole feature first. 2.3 Memory Fig.1 Cognitive psychology describe memorial procedure as three phase,sense memory, short term memory, long term memory. During memory procedure, a great deal of information will lose between any phase of transfer. Only a small quantity of sensorial information can be passed into short term memory. Information is processed and coded in phase of short term memory and then is pass into long term memory. Certainly, only information passed into long term memory can be memorized by brain, and those uncoded information will be leaved soon. 2.4 Pattern collection need choose different transducer according to object recognized in future, such as measure equipment. Feature extraction convert pattern space to feature space, and compress dimension. Classifier can classify unknown sample into the right style. It is necessary to confirm evaluative rule for the design of classier, and train classier for more effective classification. 4 Objiect Background and Dominance Effect THE RESEARCH IN ARCHITECTURE OF COGNITIVE PATTERN RECOGNITION 4.1 The Application in Matching Theory of Cognitive Science During coded procedure of memorial phase, people try to combine new information with known information in order to make new information enter into long term memory. Some psychologic experiment show that long term memory will accept knowledge correspong to real experience faster than others knowledge. During the procedure of pattern recognition, if some background information was stored in long term memory, dominance effect which act on decision-making strongly may come into being. For example, it is difficult to confirm numericĀ0āor letter Āoā when computer perform recognition of single character þo ÿ . However, it is easy to recognize character Āoā when character Āoā was presented with numerical string or word. 3 The architecture of machine pattern recognition Traditional machine pattern recognition had ever adopted template matching theory to perform pattern recognition ,but feature theory was employed most. Whatever template theory or prototype theory or feature theory, they all are descriptive method of object in application of machine pattern recognition, and have the same essence. Whether prototype is the descriptive method of feature, Whether prototype is the partial template of object, Whether feature is the descriptive method of prototype, Whether template is the descriptive method of feature. All above are the controversy of different science viewpoint in cognitive psychology. Anyway, our research need only be satisfied with descriptive requirement of research object. For certain target of convenience, the following discussion take template for prototype. THE ARCHITECTURE OF MATCHING PATTERN RECOGNITION The tranditional machine pattern recognition generally 695 Authorized licensed use limited to: GUILIN UNIVERSITY OF ELECTRONIC TECHNOLOGY. Downloaded on October 4, 2008 at 22:53 from IEEE Xplore. Restrictions apply. 4.2 can extend easily by adding new feature or prototype to it. Storeroom of knowledge and regulation also act as long-time memory. This storeroom store prior knowledge, combinational regulation of prototype, feature relation and so on.During the sector of matching decisionmaking, the result of pattern analysis will try to compare with feature/prototype which were picked up in storeroom of feature and prototype and knowledge/ regulation which were picked up in storeroom of knowledge and regulation. Then decision-making system will evaluate the result of comparison and output the recognized conclusion. If matching fail , the decision-making system will add relative feature and prototype into corresponding storeroom automatically, which make system learn new knowledge and store new content. Application of Memory Theory Cognitive psychology describe the memorial procedure as three phase,sensory memory, short-term memory, and long-term memory. However, the procedure of machine pattern recognition only has two phase, one of phase is to collect information of the outer world by transducer and keep information in computer. Long term memory can hold feature or prototype and knowledge or rule. Storeroom of feature/prototype and storeroom of knowledge/rule can be build according to long term memory theory. Traditional pattern recognition always defuse to recognize model of short-term memory. But cognitive pattern recognition will add model of short-term memory into relevant storeroom if corresponding model can not be found in storeroom of feature/prototype. If relationship, structure, method or any knowledge can not be found in storeroom of knowledge/rule, these knowledge will be append to relevant storeroom by simulating human learning function. 4.3 5 CONCLUSION The model of cognitive pattern recognition derive from model of traditional pattern recognition. Pattern analysis deal with extraction of feature, disassembly of prototype, judgement of whole topological structure, description of feature’s or prototype’s combinational structure, and characterization of background. Storeroom of knowledge/rule keep prior knowledge, combinational rule of prototype, and knowledge of feature relation and so on. Matching decision-making match the result of pattern analysis with correlative knowledge or rule come from storeroom of feature/prototype and storeroom of knowledge/rule, and then the matching result is processed according to decision-making rule. The Architectureof Cognitive Pattern Recognition The model cognitive pattern recognition was showed in Fig.2,pattern collection of the cognitive pattern recognition just as what traditional machine pattern recognition can do. Pattern analysis of cognitive pattern recognition has more function than traditional pattern recognition, which can analyse pattern stimulation come from real world. The function of pattern analysis includes feature extraction , prototype disassemble, judgment of integral topology structure, combinational description of feature or prototype, and background description. Certainly, all above function work for information search ,feature/prototype search, and matching decision. REFERENCES [1] [2] [3] [4] Fig.2 The architecture of machine pattern recognition Storeroom of feature and prototype just like long-time memory,store feature or prototype of external object, and Nisser.U.Cognitive Psychology[M].New York: NY: AppletonCentury-Crofts, 1967. Wang. S.G. Frame of pattern recognition Model Based on Cognitive psychology [J].Transaction on Wuhan university, Information Science Edition. 2002,27(5): 543-547. Zhou. G.X. Structure and method of computer pattern recognition [M]. Wuhan, Middle China University of Science and Technology Press. 1987. Rueda L .G., Oommen B.J. 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