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  1. Cognitive Computation
  2. Cognitive Computation : Volume 1
  3. Cognitive Computation : Volume 1, Issue 4, December 2009
  4. Biologically Inspired Tensor Features
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Cognitive Computation : Volume 9
Cognitive Computation : Volume 8
Cognitive Computation : Volume 7
Cognitive Computation : Volume 6
Cognitive Computation : Volume 5
Cognitive Computation : Volume 4
Cognitive Computation : Volume 3
Cognitive Computation : Volume 2
Cognitive Computation : Volume 1
Cognitive Computation : Volume 1, Issue 4, December 2009
Learning the Fréchet Mean over the Manifold of Symmetric Positive-Definite Matrices
A Cognitive Model of Saliency, Attention, and Picture Scanning
An Adaptive Genetic-Based Incremental Architecture for the On-Line Coordination of Embedded Agents
Biologically Inspired Tensor Features
Sub-Symbols and Icons
Cognitive Computation : Volume 1, Issue 3, September 2009
Cognitive Computation : Volume 1, Issue 2, June 2009
Cognitive Computation : Volume 1, Issue 1, March 2009

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Biologically Inspired Tensor Features

Content Provider Springer Nature Link
Author Mu, Yang Tao, Dacheng Li, Xuelong Murtagh, Fionn
Copyright Year 2009
Abstract According to the research results reported in the past decades, it is well acknowledged that face recognition is not a trivial task. With the development of electronic devices, we are gradually revealing the secret of object recognition in the primate’s visual cortex. Therefore, it is time to reconsider face recognition by using biologically inspired features. In this paper, we represent face images by utilizing the C1 units, which correspond to complex cells in the visual cortex, and pool over S1 units by using a maximum operation to reserve only the maximum response of each local area of S1 units. The new representation is termed C1 Face. Because C1 Face is naturally a third-order tensor (or a three dimensional array), we propose three-way discriminative locality alignment (TWDLA), an extension of the discriminative locality alignment, which is a top-level discriminate manifold learning-based subspace learning algorithm. TWDLA has the following advantages: (1) it takes third-order tensors as input directly so the structure information can be well preserved; (2) it models the local geometry over every modality of the input tensors so the spatial relations of input tensors within a class can be preserved; (3) it maximizes the margin between a tensor and tensors from other classes over each modality so it performs well for recognition tasks and (4) it has no under sampling problem. Extensive experiments on YALE and FERET datasets show (1) the proposed C1Face representation can better represent face images than raw pixels and (2) TWDLA can duly preserve both the local geometry and the discriminative information over every modality for recognition.
Starting Page 327
Ending Page 341
Page Count 15
File Format PDF
ISSN 18669956
Journal Cognitive Computation
Volume Number 1
Issue Number 4
e-ISSN 18669964
Language English
Publisher Springer-Verlag
Publisher Date 2009-11-17
Publisher Place New York
Access Restriction One Nation One Subscription (ONOS)
Subject Keyword Biologically inspired features C1 units Manifold learning Discriminative locality alignment Face recognition Computational Biology/Bioinformatics Artificial Intelligence (incl. Robotics) Computation by Abstract Devices Neurosciences
Content Type Text
Resource Type Article
Subject Cognitive Neuroscience Computer Science Applications Computer Vision and Pattern Recognition
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