基于双流混合卷积网络的外科工作流程识别

Yuan Ding, Jingfan Fan, Kun Pang, Heng Li, Tianyu Fu, Hong Song, Lingfeng Chen, Jian Yang
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引用次数: 3

摘要

手术工作流程识别是实现手术视频数据库自动索引和实时手术调度优化的前提,是现代手术室的重要组成部分。本文提出了一种基于两流混合卷积网络(TsMCNet)的手术阶段识别方法来自动识别手术工作流程。TsMCNet通过整合2D和3D卷积网络(cnn),优化从手术视频中学习到的视觉和时间特征,形成一个时空互补架构。其中,时间分支(3D CNN)负责学习相邻帧之间的时空特征,而平行视觉分支(2D CNN)专注于捕获每帧的深层视觉特征。在公共手术视频数据集(MICCAI 2016工作流挑战)上的大量实验证明了我们提出的方法的出色性能,超过了最先进的方法(例如,准确率为86.2%,F1分数为83.0%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Surgical Workflow Recognition Using Two-Stream Mixed Convolution Network
Surgical workflow recognition is the prerequisite for automatic indexing of surgical video databases and optimization of real-time operating scheduling, which is an important part of the modern operating room (OR). In this paper, we propose a surgical phase recognition method based on a two-stream mixed convolutional network (TsMCNet) to automatically recognize surgical workflow. TsMCNet optimizes the visual and temporal features learned from surgical videos by integrating 2D and 3D convolutional networks (CNNs) to form a spatio-temporal complementary architecture. Specifically, temporal branch (3D CNN) is responsible for learning the spatio-temporal features among adjacent frames, whereas the parallel visual branch (2D CNN) is focused on capturing the deep visual features of each frame. Extensive experiments on a public surgical video dataset (MICCAI 2016 Workflow Challenge) demonstrated outstanding performance of our proposed method, exceeding that of state-of-the-art methods (e.g., 86.2% accuracy and 83.0% F1 score).
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