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Object Recognition Models Based on Primate Visual Cortices: A Review |
YAO Xing-Zhong1,2, LU Tong-Wei1,3, HU Han-Ping1 |
1.State Education Commission Key Laboratory for Image Processing and Intelligent Control, Institute for Pattern Recognition and Artificial Intelligence, Huazhong University of Science and Technology, Wuhan 430074 2.Laboratory of Precision-Guided Technology, Institute for Military Theory, Second Artillery Command College, Wuhan 430012 3.School of Computer Science and Engineering, Wuhan Institute of Technology, Wuhan 430074 |
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Abstract In the past decade, a large number of experimental data have been accumulated in the primate visual cortices. Many visual system models have been developed based on the experimental data of the primates, and they have been used for computer object recognitions. In this paper, the main experimental conclusions on the primate visual system are summarized. Then, the frequently used models based on the mechanism of the primate visual system are reviewed. The MIT cortex hierarchical model is mainly discussed.
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Received: 18 September 2008
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