首页> 外文会议>Conference on Medical Imaging 2008: Imaging Processing; 20080217-19; San Diego,CA(US) >Informative Frame Detection from Wireless Capsule Video Endoscopic Images
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Informative Frame Detection from Wireless Capsule Video Endoscopic Images

机译:无线胶囊视频内窥镜图像的信息帧检测

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Wireless capsule endoscopy (WCE) is a new clinical technology permitting the visualization of the small bowel, the most difficult segment of the digestive tract. The major drawback of this technology is the high amount of time for video diagnosis. In this study, we propose a method for informative frame detection by isolating useless frames that are substantially covered by turbid fluids or their contamination with other materials, e.g., faecal, semi-processed or unabsorbed foods etc. Such materials and fluids present a wide range of colors, from brown to yellow, and/or bubble-like texture patterns. The detection scheme, therefore, consists of two stages: highly contaminated non-bubbled (HCN) frame detection and significantly bubbled (SB) frame detection. Local color moments in the Ohta color space are used to characterize HCN frames, which are isolated by the Support Vector Machine (SVM) classifier in Stage-1. The rest of the frames go to the Stage-2, where Laguerre gauss Circular Harmonic Functions (LG-CHFs) extract the characteristics of the bubble-structures in a multi-resolution framework. An automatic segmentation method is designed to extract the bubbled regions based on local absolute energies of the CHF responses, derived from the grayscale version of the original color image. Final detection of the informative frames is obtained by using threshold operation on the extracted regions. An experiment with 20,558 frames from the three videos shows the excellent average detection accuracy (96.75%) by the proposed method, when compared with the Gabor based- (74.29%) and discrete wavelet based features (62.21%).
机译:无线胶囊内窥镜检查(WCE)是一项新的临床技术,可以可视化消化道最困难的小肠段。该技术的主要缺点是视频诊断需要大量时间。在这项研究中,我们提出了一种通过隔离无用的框架来进行信息框架检测的方法,这些框架基本上被浑浊的液体覆盖,或者被粪便,半加工或未吸收的食物等其他物质污染。这些物质和液体存在范围很广颜色(从棕色到黄色)和/或类似气泡的纹理图案。因此,检测方案包括两个阶段:高度污染的非气泡(HCN)帧检测和严重气泡(SB)帧检测。 Ohta颜色空间中的局部色矩用于表征HCN帧,这些帧由Stage-1中的支持向量机(SVM)分类器隔离。其余帧进入第2阶段,在此阶段Laguerre高斯循环谐波函数(LG-CHF)在多分辨率框架中提取气泡结构的特征。一种自动分割方法被设计为基于CHF响应的局部绝对能量提取起泡区域,该局部能量来自原始彩色图像的灰度版本。信息帧的最终检测是通过对提取区域使用阈值操作来获得的。与基于Gabor的特征(74.29%)和基于离散小波的特征(62.21%)相比,通过三个视频对20,558帧进行的实验显示,所提出的方法具有出色的平均检测精度(96.75%)。

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