Title :
Sparseness-Based Descriptors for Texture Segmentation
Author :
Cote, M. ; Albu, A.B.
Author_Institution :
Electr. & Comput. Eng., Univ. of Victoria, Victoria, BC, Canada
Abstract :
This paper exploits the concept of sparseness to generate novel contextual multi-resolution texture descriptors. We propose to extract low-dimension features from Gabor-filtered images by considering the sparseness of filter bank responses. We construct several texture descriptors: the basic version describes each pixel by its contextual textural sparseness, while other versions also integrate multi-resolution information. We apply the novel low-dimension sparseness-based descriptors to the problem of texture segmentation and evaluate their performance on the public Outex database. The sparseness-based descriptors show a substantial improvement over Gabor filters with respect not only to computational costs and memory usage, but also to segmentation accuracy. The proposed approach also shows a desirable smooth, monotonic behavior with respect to the dimensionality of the descriptors.
Keywords :
Gabor filters; feature extraction; image resolution; image segmentation; image texture; Gabor-filtered images; computational costs; contextual multiresolution texture descriptors; contextual textural sparseness; filter bank responses; low-dimension feature extraction; low-dimension sparseness-based descriptors; multiresolution information; performance evaluation; public Outex database; smooth monotonic behavior; texture segmentation; Accuracy; Filter banks; Gabor filters; Image resolution; Image segmentation; Training; Vectors; Gabor filters; low-dimension descriptor; nearest neighbor classifier; sparseness; texture segmentation;
Conference_Titel :
Pattern Recognition (ICPR), 2014 22nd International Conference on
Conference_Location :
Stockholm
DOI :
10.1109/ICPR.2014.200