Computer-assisted pit-pattern classification in different wavelet domains for supporting dignity assessment of colonic polyps

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In this paper, we show that zoom-endoscopy images can be well classified according to the pit-pattern classification scheme by using texture-analysis methods in different wavelet domains. We base our approach on three different variants of the wavelet transform and propose that the color channels of the RGB and LAB color model are an important source for computing image features with high discriminative power. Color-channel information is incorporated by either using simple feature vector concatenation and cross-cooccurrence matrices in the wavelet domain. Our experimental results based on k-nearest neighbor classification and forward feature selection exemplify the advantages of the different wavelet transforms and show that color-image analysis is superior to grayscale-image analysis regarding our medical image classification problem.

论文关键词:Computer-assisted pit-pattern classification,Wavelet transformation,Colorectal cancer,Color-texture analysis

论文评审过程:Received 29 November 2007, Revised 5 June 2008, Accepted 16 July 2008, Available online 25 July 2008.

论文官网地址:https://doi.org/10.1016/j.patcog.2008.07.012