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Surgical Tool Segmentation Using A Hybrid Deep CNN-RNN Auto Encoder-Decoder

机译:手术工具分割使用混合深层CNN-RNN自动编码器解码器

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Surgical tool segmentation is used for detection, tracking and pose estimation of the tools in the vicinity of surgical scenes. It is considered as an essential task in surgical phase recognition and flow identification. Surgical flow identification is an unresolved task in the domain of context-aware surgical systems, which is used extensively on computer assisted intervention (CAI). CAI is used for staff assignment, automated guidance during intervention, surgical alert systems, automatic indexing of surgical video databases and optimisation of the real-time scheduling of operating room. Semantic segmentation is used for accurate delineation of surgical tools from the background. In semantic segmentation, each label is assigned to a class as a tool or a background. In this presented work, we applied a hybrid method utilising both recurrent and convolutional networks to achieve higher accuracy of surgical tools segmentation. The proposed method is trained and tested using a public dataset MICCAI 2016 Endoscopic Vision Challenge Robotic Instruments dataset "EndoVis". We achieved better performance using the proposed method compared to state-of-the-art methods on the same dataset for benchmarking. We achieved a balanced accuracy of 93.3% and Jaccard index of 82.7%.
机译:外科刀具分割用于检测,跟踪和施加手术场景附近的工具。它被认为是外科阶段识别和流动识别的重要任务。外科流动识别是在上下文感知外科系统领域中的未解决任务,这在计算机辅助干预(CAI)上广泛使用。 CAI用于干预期间的员工分配,自动化指导,手术警报系统,手术视频数据库的自动索引以及操作室的实时调度。语义分割用于从背景中准确描绘外科手术工具。在语义分割中,每个标签被分配给作为工具或背景的类。在这项工作中,我们应用了一种混合方法,利用反复化和卷积网络来实现更高的外科工具分割准确性。使用公共数据集Miccai 2016内窥镜视觉挑战机器人数据集“endovis”,培训和测试。与在相同数据集上的最先进的方法相比,我们使用所提出的方法实现了更好的性能,用于基准测试。我们实现了93.3%的均衡准确性,jaccard指数为82.7%。

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