2020
DOI: 10.48550/arxiv.2006.09117
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End-to-End Real-time Catheter Segmentation with Optical Flow-Guided Warping during Endovascular Intervention

Abstract: 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 interv… Show more

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