Ridgelet-based fake fingerprint detection
Neurocomputing
A new approach for texture classification in CBIR
International Journal of Computer Applications in Technology
Rotation Invariant Curvelet Features for Region Based Image Retrieval
International Journal of Computer Vision
Curvelet-based texture description to classify intact and damaged boar spermatozoa
ICIAR'12 Proceedings of the 9th international conference on Image Analysis and Recognition - Volume Part II
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Texture classification has long been an important research topic in image processing. Now a days classification based on wavelet transform is being very popular. Wavelets are very effective in representing objects with isolated point singularities, but failed to represent line singularities. Recently, ridgelet transform which deal effectively with line singularities in 2-D is introduced. But images often contain curves rather than straight lines, so curvelet transform is designed to handle it. It allows representing edges and other singularities along lines in a more efficient way when compared with other transforms. In this paper, the issue of texture classification based on curvelet transform has been analyzed. Curvelet Statistical Features (CSFs) and Curvelet Co-occurrence Features (CCFs) are derived from the sub-bands of the curvelet decomposition and are used for classification. Experimental results show that this approach allows obtaining high degree of success rate in classification.