Object perception model in visual cortex based on Bayesian network

Motivating from biological visual cues in the cortex, by simulating visual information processing and transmission mechanism in the human brain, and using Bayesian network to design object perception model in the visual cortex, this paper proposed an object perception model based on Bayesian network. First, extracted shape feature, color feature, texture feature of the given images; Second, normalized these features and inputed them all to Bayesian network for inference and learning; Third, carried out two experiments to test the validity and reliability of the proposed model. Experiment results shown that the proposed model is reasonable and robust, can integrate all possible information and combine varieties of evidence to implement uncertainty inference, can solve problems with uncertainty and incomplete effectively. The proposed model achieved better recognition performance on the given experimental image datasets, obtained a higher recognition accuracy compared with other methods, and better solved various of recognition difficulties in visual object recognition.

[1]  Tai Sing Lee,et al.  Hierarchical Bayesian inference in the visual cortex. , 2003, Journal of the Optical Society of America. A, Optics, image science, and vision.

[2]  Jun Gao,et al.  Beyond shape: incorporating color invariance into a biologically inspired feedforward model of category recognition , 2010, ICVGIP '10.

[3]  Wu Xi-sheng Content-based image retrieval of integrated color texture and shape feature , 2009 .

[4]  S. Shipp,et al.  The functional logic of cortical connections , 1988, Nature.

[5]  N. Kanwisher,et al.  Feedback of pVisual Object Information to Foveal Retinotopic Cortex , 2008, Nature Neuroscience.

[6]  Jia Shu-hong Image Classification Based on Bayesian Classifier , 2007 .

[7]  Yu Xin,et al.  Aerial Image Texture Classification Based on Naive Bayes Classifiers , 2006 .

[8]  Zhang Jianqing Residential Areas Detection on Panchromatic Remote Sensing Images Based on Nave Bayesian Networks , 2007 .

[9]  Thomas Serre,et al.  Object recognition with features inspired by visual cortex , 2005, 2005 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR'05).

[10]  R. Jacobs,et al.  Experience-dependent integration of texture and motion cues to depth , 1999, Vision Research.

[11]  W. Richards,et al.  Perception as Bayesian Inference , 2008 .

[12]  He Sheng-qiang Research on Multisensor Target Recognition Algorithm Based on Bayesian Networks , 2007 .

[13]  Qiang Ji,et al.  Active information fusion for decision making under uncertainty , 2002, Proceedings of the Fifth International Conference on Information Fusion. FUSION 2002. (IEEE Cat.No.02EX5997).

[14]  Bartlett W. Mel SEEMORE: Combining Color, Shape, and Texture Histogramming in a Neurally Inspired Approach to Visual Object Recognition , 1997, Neural Computation.

[15]  Thomas Serre,et al.  Robust Object Recognition with Cortex-Like Mechanisms , 2007, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[16]  V. Lamme,et al.  The distinct modes of vision offered by feedforward and recurrent processing , 2000, Trends in Neurosciences.

[17]  Anil K. Jain,et al.  Unsupervised texture segmentation using Gabor filters , 1990, 1990 IEEE International Conference on Systems, Man, and Cybernetics Conference Proceedings.

[18]  Daniel Kersten,et al.  Bayesian models of object perception , 2003, Current Opinion in Neurobiology.

[19]  Lu Li,et al.  Remote Sensing Image Retrieval Using Color and Texture Fused Features , 2004 .