Exploring the effectiveness of using temporal order information for the early-recognition of suture surgery's six steps based on video image analyses of surgeons' hand actions

Miwa Tsubota, Ye Li, J. Ohya
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Abstract

To alleviate the recent shortage problem of nurses, the actualization of RSN (Robotic Scrub Nurse) that can autonomously judge the current step of the surgery and pass the surgical instruments needed for the next step to surgeons is desired. The authors developed a computer vision based algorithm that can early-recognize only two steps of suture surgery. Based on the past work, this paper explores the effectiveness of utilizing temporal order of the six steps in suture surgery for the early-recognition. Our early-recognition algorithm consists of two modules: start point detection and hand action early-recognition. Segments of the test video that start from each quasi-start point are compared with the training data, and their probabilities are calculated. According to the calculated probabilities, hand actions could be early-recognized. To improve the early-recognition accuracy, temporal order information could be useful. This paper checks confusions of three steps' early recognition results, and if necessary, early-recognizes again after eliminating the wrong result, while for the other three steps, temporal order information is not utilized. Experimental results show our early-recognition method that utilizes the temporal order information achieves better performances.
基于外科医生手部动作视频图像分析,探索利用时间顺序信息对缝合手术六个步骤进行早期识别的有效性
为了缓解目前护士短缺的问题,需要实现能够自主判断当前手术步骤并将下一步手术所需的手术器械传递给外科医生的RSN (Robotic Scrub Nurse)。作者开发了一种基于计算机视觉的算法,可以早期识别缝合手术的两个步骤。本文在以往工作的基础上,探讨了在缝合手术中利用六步时间顺序进行早期识别的有效性。我们的早期识别算法包括两个模块:起点检测和手部动作早期识别。从每个准起始点开始的测试视频片段与训练数据进行比较,并计算其概率。根据计算出的概率,可以早期识别手部动作。为了提高早期识别的准确性,时序信息可能是有用的。本文对三个步骤的早期识别结果进行混淆检查,必要时在排除错误结果后重新进行早期识别,而对其他三个步骤则不利用时间顺序信息。实验结果表明,利用时序信息的早期识别方法取得了较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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