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A Framework for the Recognition of High-Level Surgical Tasks From Video Images for Cataract Surgeries

机译:从白内障手术视频图像中识别高级手术任务的框架

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The need for a better integration of the new generation of computer-assisted-surgical systems has been recently emphasized. One necessity to achieve this objective is to retrieve data from the operating room (OR) with different sensors, then to derive models from these data. Recently, the use of videos from cameras in the OR has demonstrated its efficiency. In this paper, we propose a framework to assist in the development of systems for the automatic recognition of high-level surgical tasks using microscope videos analysis. We validated its use on cataract procedures. The idea is to combine state-of-the-art computer vision techniques with time series analysis. The first step of the framework consisted in the definition of several visual cues for extracting semantic information, therefore, characterizing each frame of the video. Five different pieces of image-based classifiers were, therefore, implemented. A step of pupil segmentation was also applied for dedicated visual cue detection. Time series classification algorithms were then applied to model time-varying data. Dynamic time warping and hidden Markov models were tested. This association combined the advantages of all methods for better understanding of the problem. The framework was finally validated through various studies. Six binary visual cues were chosen along with 12 phases to detect, obtaining accuracies of 94%.
机译:最近强调了更好地集成新一代计算机辅助手术系统的需要。实现此目标的一种必要方式是使用不同的传感器从手术室(OR)检索数据,然后从这些数据中导出模型。最近,在手术室中使用摄像机的视频已经证明了其效率。在本文中,我们提出了一个框架,以协助使用显微镜视频分析自动识别高级手术任务的系统的开发。我们验证了其在白内障手术中的使用。这个想法是将最新的计算机视觉技术与时间序列分析相结合。该框架的第一步包括定义几个视觉提示,以提取语义信息,从而表征视频的每个帧。因此,实现了五个不同的基于图像的分类器。瞳孔分割的步骤也适用于专用的视觉提示检测。然后将时间序列分类算法应用于时变数据模型。测试了动态时间扭曲和隐马尔可夫模型。这种关联结合了所有方法的优点,可以更好地理解问题。该框架最终通过各种研究得到验证。选择了六个二进制视觉提示以及12个阶段进行检测,获得了94%的准确性。

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