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Polyp Tracking in Video Colonoscopy Using Optical Flow With an On-The-Fly Trained CNN

机译:使用实时训练的CNN使用光流在视频结肠镜检查中进行息肉追踪

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Colonoscopy has been widely applied as a common practice to inspect the inside of large bowel for colon cancer screening. However, missing polyps in such procedure could happen and thus preventing early disease detection and treatment. In this paper, we propose an algorithm for automatic polyp detection and localization in colonoscopy video. The method initially detects and localizes polyps based on single frame object detection or segmentation network such as U-Net. Then it utilizes optical flow to track polyps and fuse temporal information. To overcome tracking failure caused by motion effects, a motion regression model and an efficient on-the-fly trained CNN have been deployed. The proposed algorithm achieves the highest scores in both polyp detection task and polyp localization task in the MICCAI 2018 Endoscopic Vision Challenge on “Gastrointestinal Image Analysis”.
机译:结肠镜检查已被广泛用作检查大肠内部进行结肠癌筛查的常规方法。但是,在这种手术中可能会丢失息肉,从而阻止早期疾病的发现和治疗。在本文中,我们提出了一种用于结肠镜检查视频中息肉自动检测和定位的算法。该方法最初基于单帧对象检测或分段网络(例如U-Net)来检测和定位息肉。然后,它利用光流跟踪息肉并融合时间信息。为了克服由运动效应引起的跟踪失败,已经部署了运动回归模型和有效的实时训练的CNN。在MICCAI 2018内窥镜视觉挑战赛“胃肠道图像分析”中,提出的算法在息肉检测任务和息肉定位任务中均获得最高分。

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