Structural Similarity Sparse Coding and Image Feature Extraction
LI Zhi-Qing1,2,3,SHI Zhi-Ping1,LI Zhi-Xin1,2,SHI Zhong-Zhi1
1.Key Laboratory of Intelligent Information Processing,Institute of Computing Technology Chinese Academy of Sciences,Beijing 100190 2. Graduate University of Chinese Academy of Sciences,Beijing 100049 3. College of Information Engineering,Xiangtan University,Xiangtan 411105
Abstract:The structural similarity is introduced into sparse coding model, and a sparse coding model based on structural similarity is proposed. Then, the model is employed to extract the image sparse coding feature. The experimental results show that the improved sparse coding model is consistent with human visual system for its capacity of structural information preservation. Furthermore, compared with the standard sparse coding model, the proposed model attains the reconstructed image which preserves better structural information of the original image.
[1] Field D J. What Is the Goal of Sensory Coding? Neural Computation, 1994, 6(4): 559-601 [2] Olshausen B A, Field D J. Emergence of Simple-Cell Receptive Field Properties by Learning a Sparse Code for Natural Images. Nature, 1996, 381(6583): 607-609 [3] Hyvarinen A, Hoyer P O. A Two-Layer Sparse Coding Model Learns Simple and Complex Cell Receptive Fields and Topography from Natural Images. Vision Research, 2001, 41(18): 2413-2423 [4] Grimes D B, Rao R P N. Bilinear Sparse Coding for Invariant Vision. Neural Computation, 2005, 17(1): 47-73 [5] Hoyer P O. Non-Negative Matrix Factorization with Sparseness Constraints. Journal of Machine Learning Research, 2004, 5(12): 1457-1469 [6] Malo J, Epifanio I, Navarro R, et al. Non-Linear Image Representation for Efficient Perceptual Coding. IEEE Trans on Image Processing, 2006, 15(1): 68-80 [7] Li Qingyong, Lin Dacheng, Shi Zhongzhi. Task-Oriented Sparse Coding Model for Pattern Classification // Proc of the International Conference on Advances in Natural Computation. Changsha, China, 2005: 903-914 [8] Liao Lingzhi, Luo Siwei, Tian Mei, et al. Fast and Adaptive Low-Pass Whitening Filters for Natural Images // Proc of the International Conference on Neural Information Processing. Hongkong, China, 2006: 343-352 [9] Sun Jun, Wang Wenyuan, Zhuo Qing. Sparse Coding-Based Global Face Feature Extraction Algorithm. Journal of Tsinghua University: Science and Technology, 2002, 42(3): 411-413 (in Chinese)(孙 俊,王文渊,卓 晴.基于稀疏编码的提取人脸整体特征算法.清华大学学报:自然科学版, 2002, 42(3): 411-413) [10] Liu Weixiang, Zheng Nanning. Learning Sparse Features for Classification by Mixture Models. Pattern Recognition Letters, 2004, 25(2): 155-161 [11] Li Shang, Huang Deshuang, Zheng Chunhou, et al. Noise Removal Using a Novel Non-Negative Sparse Coding Shrinkage Technique. Neurocomputing, 2006, 69(7/8/9): 874-877 [12] Wang Zhou, Bovik A C, Sheikh H R, et al. Image Quality Assessment: From Error Visibility to Structural Similarity. IEEE Trans on Image Processing, 2004, 13(4): 600-612 [13] Friedman J H. Exploratory Projection Pursuit. Journal of the American Statistical Association, 1987, 82(397): 249-266