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Surgical Action and Instrument Detection Based on Multiscale Information Fusion

机译:基于多尺度信息融合的外科手术和仪器检测

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摘要

The detection of surgical actions and instruments plays a very important role in computer-assisted endoscopic surgery. However, organ deformation and narrow surgical field increase the task difficulty. Accordingly, the problems of the detection of surgical actions and instruments have not been solved yet. In this paper, we proposed a multiscale fusion feature pyramid network (MSF-FPN) to merge low-level semantic information and high-level semantic information. Firstly, the feature map effectively aggregates the information by the initial layer of the pyramid network, and then diverges after the cross-transmission of the feature information in the middle layer. Finally, a strong semantic feature map was obtained in the output layer. Experiments verified that the average precision of the proposed MSF-FPN on the public endoscopic surgeon action detection (ESAD) dataset is increased by 2.9% and 1.5% compared with the general FPN and path aggregation network (PANet), and the average precision on the proposed cataract-based object detection (COD) dataset is increased by 4.3% and 2.6%, respectively.
机译:手术作用和仪器的检测在计算机辅助内窥镜手术中起着非常重要的作用。然而,器官变形和窄手术场增加了任务难度。因此,尚未解决外科手术和仪器的检测问题。在本文中,我们提出了多尺度融合功能金字塔网络(MSF-FPN),以合并低级语义信息和高级语义信息。首先,特征图有效地聚集了金字塔网络的初始层的信息,然后在中间层中的特征信息的交叉传输之后发散。最后,在输出层中获得了强大的语义特征图。实验证明,与通用FPN和路径聚合网络(PANET)相比,在公共内窥镜外科医生动作检测(ESAD)数据集上提出的MSF-FPN的平均精度增加了2.9%和1.5%,以及平均精度所提出的基于白内障的物体检测(COD)数据集分别增加了4.3%和2.6%。

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