胶囊内窥镜视频摘要的自适应特征提取

Ahmed Z. Emam, Yasser A. Ali, M. M. Ben Ismail
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引用次数: 10

摘要

胶囊内窥镜(CE)被认为是一种成熟的工具,用于小肠的探索和调查。有大量不同的胶囊已经在医疗领域推出了不同的供应商,如给定成像,奥林巴斯,IntroMedic和CapsoVision。要找到能够指定三到四个小时看一个病人视频的GI专家是非常困难的,而且在经济上是不可行的。本研究探索并研究了不同的特征提取技术,如颜色矩RGB、颜色矩HSV、颜色直方图、LBP和统计特征,作为CE图像出血分类算法的预处理阶段。利用自适应特征选择技术,提出了两种图像序列约简和摘要的方法。初步结果表明,该算法对CE图像序列大小的压缩率高达75%以上。采用不同的特征提取技术对不同级别的帧频率进行提取。
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Adaptive features extraction for Capsule Endoscopy (CE) video summarization
Capsule Endoscopy (CE) is considered an established tool for the exploration and investigation of the small intestine. There are a large number of different capsules which have been launched in the medical field by different vendors such as Given Imaging, Olympus, IntroMedic, and CapsoVision. To find experts of GI that are able to designate three to four hours for viewing one patient video will be very hard and unfeasible economically. In this research, different feature extraction techniques, such as Color Moment RGB, Color Moment HSV, Color Histogram, LBP, and Statistical features, were explored and investigated as a preprocessing phase for CE image bleeding classification algorithms. Two methods are developed using the adaptive feature selection techniques for image sequence reduction and summarization. The preliminary results showed a high reduction rate for CE images sequence size by more than 75%. Different levels of frame frequency occurrence using different features extraction techniques were developed.
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