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      Eigenfaces for Recognition

      1 , 1
      Journal of Cognitive Neuroscience
      MIT Press - Journals

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          Abstract

          We have developed a near-real-time computer system that can locate and track a subject's head, and then recognize the person by comparing characteristics of the face to those of known individuals. The computational approach taken in this system is motivated by both physiology and information theory, as well as by the practical requirements of near-real-time performance and accuracy. Our approach treats the face recognition problem as an intrinsically two-dimensional (2-D) recognition problem rather than requiring recovery of three-dimensional geometry, taking advantage of the fact that faces are normally upright and thus may be described by a small set of 2-D characteristic views. The system functions by projecting face images onto a feature space that spans the significant variations among known face images. The significant features are known as "eigenfaces," because they are the eigenvectors (principal components) of the set of faces; they do not necessarily correspond to features such as eyes, ears, and noses. The projection operation characterizes an individual face by a weighted sum of the eigenface features, and so to recognize a particular face it is necessary only to compare these weights to those of known individuals. Some particular advantages of our approach are that it provides for the ability to learn and later recognize new faces in an unsupervised manner, and that it is easy to implement using a neural network architecture.

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          Most cited references9

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          Application of the Karhunen-Loeve procedure for the characterization of human faces

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            Stimulus-selective properties of inferior temporal neurons in the macaque.

            Previous studies have reported that some neurons in the inferior temporal (IT) cortex respond selectively to highly specific complex objects. In the present study, we conducted the first systematic survey of the responses of IT neurons to both simple stimuli, such as edges and bars, and highly complex stimuli, such as models of flowers, snakes, hands, and faces. If a neuron responded to any of these stimuli, we attempted to isolate the critical stimulus features underlying the response. We found that many of the responsive neurons responded well to virtually every stimulus tested. The remaining, stimulus-selective cells were often selective along the dimensions of shape, color, or texture of a stimulus, and this selectivity was maintained throughout a large receptive field. Although most IT neurons do not appear to be "detectors" for complex objects, we did find a separate population of cells that responded selectively to faces. The responses of these cells were dependent on the configuration of specific face features, and their selectivity was maintained over changes in stimulus size and position. A particularly high incidence of such cells was found deep in the superior temporal sulcus. These results indicate that there may be specialized mechanisms for the analysis of faces in IT cortex.
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              The Representation and Matching of Pictorial Structures

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                Author and article information

                Journal
                Journal of Cognitive Neuroscience
                Journal of Cognitive Neuroscience
                MIT Press - Journals
                0898-929X
                1530-8898
                January 1991
                January 1991
                : 3
                : 1
                : 71-86
                Affiliations
                [1 ]Vision and Modeling Group, The Media Laboratory Massachusetts, Institute of Technology
                Article
                10.1162/jocn.1991.3.1.71
                23964806
                2c425a20-8d07-4d4d-8bde-e321ed2babba
                © 1991
                History

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