基于深度学习的腹腔镜视频手术工具存在检测的多标签分类

Sheng Wang, Ashwin Raju, Junzhou Huang
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引用次数: 36

摘要

手术流程的自动识别是计算机辅助干预领域尚未解决的问题。在所有用于手术工作流程识别的特征中,一个重要的特征是手术工具的存在。提取此特征会导致手术工具存在检测问题,以检测每次手术中使用的工具。提出了一种基于深度学习的腹腔镜视频中手术工具存在检测的多标签分类方法。该方法结合了两种最先进的深度神经网络,并使用集成学习将工具存在检测问题作为多标签分类问题来解决。所提出的方法的性能已经在由计算机辅助干预建模和监测研讨会举行的手术工具存在检测挑战中进行了评估。与其他方法相比,该方法表现出优越的性能,并获得了挑战赛的第一名。
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Deep learning based multi-label classification for surgical tool presence detection in laparoscopic videos
Automatic recognition of surgical workflow is an unresolved problem among the community of computer-assisted interventions. Among all the features used for surgical workflow recognition, one important feature is the presence of the surgical tools. Extracting this feature leads to the surgical tool presence detection problem to detect what tools are used at each time in surgery. This paper proposes a deep learning based multi-label classification method for surgical tool presence detection in laparoscopic videos. The proposed method combines two state-of-the-art deep neural networks and uses ensemble learning to solve the tool presence detection problem as a multi-label classification problem. The performance of the proposed method has been evaluated in the surgical tool presence detection challenge held by Modeling and Monitoring of Computer Assisted Interventions workshop. The proposed method shows superior performance compared to other methods and has won the first place of the challenge.
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