Preserving boundaries for image texture segmentation using grey level co-occurring probabilities
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摘要
Texture analysis has been used extensively in the computer-assisted interpretation of digital imagery. A popular texture feature extraction approach is the grey level co-occurrence probability (GLCP) method. Most investigations consider the use of the GLCP texture features for classification purposes only, and do not address segmentation performance. Specifically, for segmentation, the pixels in an image located near texture boundaries have a tendency to be misclassified. Boundary preservation when using the GLCP texture features for image segmentation is important. An advancement which exploits spatial relationships has been implemented. The generated features are referred to as weighted GLCP (WGLCP) texture features. In addition, an investigation for selecting suitable GLCP parameters for improved boundary preservation is presented. From the tests, WGLCP features provide improved boundary preservation and segmentation accuracy at a computational cost. As well, the GLCP correlation statistical parameter should not be used when segmenting images with high contrast texture boundaries.
论文关键词:Co-occurrence probabilities,Co-occurrence matrix,Digital imaging,Computer vision,Segmentation,Synthetic aperture radar,Sea ice,Texture,Remote sensing
论文评审过程:Received 27 October 2004, Revised 29 June 2005, Accepted 12 July 2005, Available online 21 September 2005.
论文官网地址:https://doi.org/10.1016/j.patcog.2005.07.010