Al Hajj Hassan, Lamard Mathieu, Cochener Beatrice, Quellec Gwenole
Annu Int Conf IEEE Eng Med Biol Soc. 2017 Jul;2017:4407-4410. doi: 10.1109/EMBC.2017.8037833.
In recent years, several algorithms were proposed to monitor a surgery through the automatic analysis of endoscope or microscope videos. This paper aims at improving existing solutions for the automated analysis of cataract surgeries, the most common ophthalmic surgery, which are performed under a microscope. Through the analysis of a video recording the surgical tray, it is possible to know which tools are put on or taken from the surgical tray, and therefore which ones are likely being used by the surgeon. Combining these observations with observations from the microscope video should enhance the overall performance of the system. Our contribution is twofold: first, datasets of artificial surgery videos are generated in order to train the convolutional neural networks (CNN) and, second, two classification methods are evaluated to detect the presence of tools in videos. Also, we assess the impact of the manner of building the artificial datasets on the tool recognition performance. By design, the proposed artificial datasets highly reduce the need for fully annotated real datasets and should also produce better performance. Experiments show that one of the proposed classification methods was able to detect most of the targeted tools well.
近年来,人们提出了几种算法,通过对内窥镜或显微镜视频进行自动分析来监测手术过程。本文旨在改进现有的用于白内障手术自动分析的解决方案,白内障手术是最常见的眼科手术,在显微镜下进行。通过分析记录手术托盘的视频,可以知道哪些工具放在手术托盘上或从手术托盘上拿走,从而知道外科医生可能正在使用哪些工具。将这些观察结果与显微镜视频的观察结果相结合,应该可以提高系统的整体性能。我们的贡献有两个方面:第一,生成人工手术视频数据集以训练卷积神经网络(CNN);第二,评估两种分类方法以检测视频中工具的存在。此外,我们评估了构建人工数据集的方式对工具识别性能的影响。通过设计,所提出的人工数据集极大地减少了对完全注释的真实数据集的需求,并且应该也能产生更好的性能。实验表明,所提出的分类方法之一能够很好地检测出大多数目标工具。