腹腔镜视频手术阶段的时间分割

Manfred Jürgen Primus, Klaus Schöffmann, L. Böszörményi
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引用次数: 27

摘要

腹腔镜手术的视频需要被暂时分割成几个阶段,这样外科医生才能在日常工作中有效地使用这些录像。本文研究了一种基于仪器检测和识别的相位自动分割方法的性能。与已知的将阶段与注释数据集动态对齐的方法相反,我们的方法不限于标准化或不变的内窥镜程序。腹腔镜手术的阶段与一种或一组特定器械的存在高度相关。因此,我们过程的第一步是定义一组描述这些相关性的规则。下一步是使用基于颜色的分割方法和基于规则的图像矩解释进行仪器的空间检测,以改进检测。最后,利用SVM分类器和ORB特征对检测到的区域进行识别。评价结果表明,该技术在腹腔镜胆囊切除术视频中能够可靠地发现相位。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporal segmentation of laparoscopic videos into surgical phases
Videos of laparoscopic surgeries need to be segmented temporally into phases so that surgeons can use the recordings efficiently in their everyday work. In this paper we investigate the performance of an automatic phase segmentation method based on instrument detection and recognition. Contrary to known methods that dynamically align phases to an annotated dataset, our method is not limited to standardized or unvarying endoscopic procedures. Phases of laparoscopic procedures show a high correlation to the presence of one or a group of certain instruments. Therefore, the first step of our procedure is the definition of a set of rules that describe these correlations. The next step is the spatial detection of instruments using a color-based segmentation method and a rule-based interpretation of image moments for the refinement of the detections. Finally, the detected regions are recognized with SVM classifiers and ORB features. The evaluation shows that the proposed technique find phases in laparoscopic videos of cholecystectomies reliably.
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