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Texture and color based image segmentation and pathology detection in capsule endoscopy videos

机译:胶囊内窥镜视频中基于纹理和颜色的图像分割和病理检测

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摘要

This paper presents an in-depth study of several approaches to exploratory analysis of wireless capsule endoscopy images (WCE). It is demonstrated that versatile texture and color based descriptors of image regions corresponding to various anomalies of the gastrointestinal tract allows their accurate detection of pathologies in a sequence of WCE frames. Moreover, through classification of single pixels described by texture features of their neighborhood, the images can be segmented into homogeneous areas well matched to the image content. For both, detection and segmentation tasks the same procedure is applied which consists of features calculation, relevant feature subset selection and classification stages. This general three-stage framework is realized using various recognition strategies. In particular, the performance of the developed Vector Supported Convex Hull classification algorithm is compared against Support Vector Machines run in configuration with two different feature selection methods.
机译:本文对无线胶囊内窥镜图像(WCE)进行探索性分析的几种方法进行了深入研究。证明了与胃肠道的各种异常相对应的图像区域的基于纹理和颜色的通用描述符允许其在一系列WCE帧中准确地检测病理。此外,通过对由其邻域的纹理特征描述的单个像素进行分类,可以将图像分割为与图像内容完全匹配的均匀区域。对于检测任务和分割任务,都应用相同的过程,包括特征计算,相关特征子集选择和分类阶段。这个通用的三阶段框架是使用各种识别策略实现的。特别是,将已开发的Vector Supported Convex Hull分类算法的性能与配置有两种不同特征选择方法的Support Vector Machines进行了比较。

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