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A statistical feature based novel method to detect bleeding in wireless capsule endoscopy images

机译:基于统计特征的无线胶囊内窥镜图像出血检测新方法

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Wireless capsule endoscopy (WCE) is a recently developed technology to detect small intestine diseases, such as bleeding. In this paper, a scheme for automatic bleeding detection from WCE video is proposed based on different statistical measures computed from a new red to green (R/G) pixel ratio intensity plane of RGB color images. Different statistical parameters, namely mean, mode, maximum, minimum, skewness, median, variance, and kurtosis are used to extract variation in spatial characteristics in R/G intensity plane of bleeding and non-bleeding WCE RGB images. Depending on the ability to provide significantly distinguishable characteristics, in the proposed feature vector, median, variance, and kurtosis of R/G ratio values corresponding to a WCE image are considered. For the purpose of classification, K-nearest neighbor (KNN) classifier is employed. From extensive experimentation on several WCE videos collected from a publicly available database, it is observed that the proposed method can successfully detect bleeding and non-bleeding images with high level of accuracy, sensitivity and specificity in comparison to that of some of the existing methods.
机译:无线胶囊内窥镜检查(WCE)是一种最新开发的技术,用于检测小肠疾病,例如出血。本文提出了一种基于WCE视频自动检测出血的方案,该方案基于从RGB彩色图像的新的红绿色(R / G)像素比率强度平面计算出的不同统计量。使用不同的统计参数,即均值,众数,最大值,最小值,偏度,中位数,方差和峰度来提取出血和非出血WCE RGB图像的R / G强度平面中的空间特征变化。根据提供明显可区别特征的能力,在建议的特征向量中,考虑了与WCE图像相对应的R / G比值的中值,方差和峰度。为了分类的目的,使用K最近邻(KNN)分类器。通过对从公开数据库中收集的多个WCE视频进行的广泛实验,可以发现,与某些现有方法相比,该方法可以成功地以较高的准确性,灵敏性和特异性检测出血和非出血图像。

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