Title :
Unsupervised texture segmentation based on multi-scale Local Binary Patterns and FCMs clustering
Author :
Ma, L. ; Lu, L.P. ; Zhu, L.
Author_Institution :
School of Automation, Hangzhou Dianzi University, 310018, China
Abstract :
This paper present an efficient multi-scale approach to unsupervised texture segmentation based on features extracted from Local Binary Pattern (LBP) histograms and fuzzy C-Means clustering with spatial information. In the approach, a multi-scale version of LBP is firstly adopted to overcome the region limitation of basic LBP by extending to larger scales for texture-content extractions. Texture features consisting of averaged intensities, LBP histogram distributions at different scales are then computed within preset windows. Finally, a modified fuzzy C-Means clustering is performed for small region-based segmentation where the spatial position is involved in the object function for enhancing the spatial-dependency among feature vectors within a texture class. The performance of the proposed method is demonstrated on segmentation of several multi-textured images and comparison studies on feature selection analysis are shown on its effectiveness.
Keywords :
feature formation; fuzzy c_means; local binary pattern; texture segmentation;
Conference_Titel :
Wireless, Mobile and Multimedia Networks, 2006 IET International Conference on
Conference_Location :
hangzhou, China
Print_ISBN :
0-86341-644-6