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Towards Real-Time Polyp Detection in Colonoscopy Videos: Adapting Still Frame-Based Methodologies for Video Sequences Analysis

机译:走向结肠镜检查视频中的实时息肉检测:调整基于静止帧的视频序列分析方法

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Colorectal cancer is the second cause of cancer death in United States: precursor lesions (polyps) detection is key for patient survival. Though colonoscopy is the gold standard screening tool, some polyps are still missed. Several computational systems have been proposed but none of them are used in the clinical room mainly due to computational constraints. Besides, most of them are built over still frame databases, decreasing their performance on video analysis due to the lack of output stability and not coping with associated variability on image quality and polyp appearance. We propose a strategy to adapt these methods to video analysis by adding a spatio-temporal stability module and studying a combination of features to capture polyp appearance variability. We validate our strategy, incorporated on a real-time detection method, on a public video database. Resulting method detects all polyps under real time constraints, increasing its performance due to our adaptation strategy.
机译:大肠癌是美国癌症死亡的第二大原因:前体病变(息肉)的检测是患者生存的关键。尽管结肠镜检查是金标准筛查工具,但仍未漏出一些息肉。已经提出了几种计算系统,但是主要由于计算限制,在临床室中没有使用它们。此外,它们中的大多数都建立在静止帧数据库之上,由于缺乏输出稳定性并且无法应付图像质量和息肉外观的相关变化,从而降低了它们在视频分析中的性能。我们提出了一种策略,通过添加时空稳定性模块并研究功能组合以捕获息肉外观变异性,将这些方法应用于视频分析。我们在公共视频数据库中验证了结合实时检测方法的策略。最终的方法可以在实时约束下检测所有息肉,这归功于我们的自适应策略,从而提高了其性能。

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