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End-to-End Real-time Catheter Segmentation with Optical Flow-Guided Warping during Endovascular Intervention

机译:端到端实时导管分割与血管内介入治疗中的光导引导翘曲

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Accurate real-time catheter segmentation is an important pre-requisite for robot-assisted endovascular intervention. Most of the existing learning-based methods for catheter segmentation and tracking are only trained on smallscale datasets or synthetic data due to the difficulties of ground-truth annotation. Furthermore, the temporal continuity in intraoperative imaging sequences is not fully utilised. In this paper, we present FW-Net, an end-to-end and real-time deep learning framework for endovascular intervention. The proposed FW-Net has three modules: a segmentation network with encoder-decoder architecture, a flow network to extract optical flow information, and a novel flow-guided warping function to learn the frame-to-frame temporal continuity. We show that by effectively learning temporal continuity, the network can successfully segment and track the catheters in real-time sequences using only raw ground-truth for training. Detailed validation results confirm that our FW-Net outperforms stateof-the-art techniques while achieving real-time performance.
机译:准确的实时导管分割是机器人辅助血管内介入治疗的重要先决条件。由于地面实况注释的困难,大多数现有的基于学习的导管分割和跟踪方法仅在小规模数据集或合成数据上进行训练。此外,术中成像序列的时间连续性没有得到充分利用。在本文中,我们介绍了FW-Net,这是一种用于血管内干预的端到端实时实时深度学习框架。拟议的FW-Net具有三个模块:具有编码器-解码器体系结构的分段网络,用于提取光流信息的流网络以及用于学习帧到帧时间连续性的新颖的流引导弯曲功能。我们表明,通过有效地学习时间连续性,网络可以仅使用原始的地面真相进行训练就可以成功地实时分割和跟踪导管。详细的验证结果证实,我们的FW-Net在实现实时性能的同时,胜过最先进的技术。

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