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Texture classification of images from Endoscopic Capsule by using MLP and SVM- A comparative approach

机译:使用MLP和SVM对内窥镜胶囊图像进行纹理分类-比较方法

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This article reports a comparative study of Multilayer Perceptrons (MLP) and Support Vector Machines (SVM) in the classification of endoscopic capsule images. Texture information is coded by second order statistics of color image levels extracted from co-occurrence matrices. The cooccurrence matrices are computed from images rich in texture information. These images are obtained by processing the original images in the wavelet domain in order to select the most important information concerning texture description. Texture descriptors calculated from co-occurrence matrices are then modeled by using third and forth order moments in order to cope with non-Gaussianity, which appears especially in some pathological cases. Several color spaces are used, namely the most simple RGB, the most related to the human perception HSV, and the one that best separates light and color information, which uses luminance and color differences, usually known as YCbCr.
机译:本文报告了多层感知器(MLP)和支持向量机(SVM)在内窥镜胶囊图像分类中的比较研究。纹理信息由从共现矩阵提取的彩色图像级别的二阶统计信息编码。共生矩阵是从富含纹理信息的图像中计算出来的。这些图像是通过在小波域中处理原始图像而获得的,以便选择与纹理描述有关的最重要的信息。然后,通过使用三阶和四阶矩对从共现矩阵计算出的纹理描述符进行建模,以应对非高斯性,这种情况在某些病理情况下尤为明显。使用了几种颜色空间,即最简单的RGB,与人类感知HSV最相关的颜色空间,以及最能分离光线和颜色信息的颜色空间,后者使用亮度和色差,通常称为YCbCr。

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