Satellite image classification using sparse codes of multiple features

This paper presents a new method for satellite image classification. Specifically, we make two main contributions: (1) we introduce the sparse coding method for high-resolution satellite image classification; (2) we effectively combine a set of diverse and complementary features-SIFT, Color Histogram and Gabor to further improve the performance. A two-stage linear SVM classifier is designed for this purpose, which firstly generate probability vectors for each image with SIFT, Color Histogram and Gabor features respectively and then the generated probability vectors with different features are concatenated as the input features of the second stage of classification. In the experiment of satellite image categorization, we And that, in terms of classification accuracy, the suggested classification method using sparse codes of multiple features achieves very promising performances and the linear kernel can remarkably reduce the complexity of the SVM classifier.

[1]  D. Donoho For most large underdetermined systems of equations, the minimal 𝓁1‐norm near‐solution approximates the sparsest near‐solution , 2006 .

[2]  Terrence J. Sejnowski,et al.  Learning Overcomplete Representations , 2000, Neural Computation.

[3]  David J. Field,et al.  Emergence of simple-cell receptive field properties by learning a sparse code for natural images , 1996, Nature.

[4]  L. Ruiz,et al.  TEXTURE FEATURE EXTRACTION FOR CLASSIFICATION OF REMOTE SENSING DATA USING WAVELET DECOMPOSITION : A COMPARATIVE STUDY , 2004 .

[5]  Cordelia Schmid,et al.  Beyond Bags of Features: Spatial Pyramid Matching for Recognizing Natural Scene Categories , 2006, 2006 IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR'06).

[6]  Chung-Sheng Li,et al.  Deriving texture feature set for content-based retrieval of satellite image database , 1997, Proceedings of International Conference on Image Processing.

[7]  Nello Cristianini,et al.  Learning the Kernel Matrix with Semidefinite Programming , 2002, J. Mach. Learn. Res..

[8]  R. Tibshirani Regression Shrinkage and Selection via the Lasso , 1996 .

[9]  Peng Zhao,et al.  On Model Selection Consistency of Lasso , 2006, J. Mach. Learn. Res..

[10]  Yihong Gong,et al.  Linear spatial pyramid matching using sparse coding for image classification , 2009, CVPR.

[11]  Bruno A. Olshausen,et al.  Sparse Coding Of Time-Varying Natural Images , 2010 .

[12]  Allen Y. Yang,et al.  Robust Face Recognition via Sparse Representation , 2009, IEEE Transactions on Pattern Analysis and Machine Intelligence.