SAR-RARP50: Segmentation of surgical instrumentation and Action Recognition on Robot-Assisted Radical Prostatectomy Challenge

Dimitrios Psychogyios,Emanuele Colleoni,Beatrice Van Amsterdam, Chih-Yang Li, Shu-Yu Huang,Yuchong Li, Fucang Jia, Baosheng Zou,Guotai Wang,Yang Liu, Maxence Boels,Jiayu Huo,Rachel Sparks,Prokar Dasgupta,Alejandro Granados,Sebastien Ourselin,Mengya Xu,An Wang, Yanan Wu,Long Bai,Hongliang Ren, Atsushi Yamada, Yuriko Harai,Yuto Ishikawa,Kazuyuki Hayashi, Jente Simoens, Pieter DeBacker, Francesco Cisternino, Gabriele Furnari,Alex Mottrie, Federica Ferraguti,Satoshi Kondo,Satoshi Kasai, Kousuke Hirasawa, Soohee Kim, Seung Hyun Lee,Kyu Eun Lee,Hyoun-Joong Kong, Kui Fu, Chao Li, Shan An, Stefanie Krell,Sebastian Bodenstedt,Nicolas Ayobi, Alejandra Perez, Santiago Rodriguez, Juanita Puentes, Pablo Arbelaez, Omid Mohareri,Danail Stoyanov

CoRR(2023)

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摘要
Surgical tool segmentation and action recognition are fundamental building blocks in many computer-assisted intervention applications, ranging from surgical skills assessment to decision support systems. Nowadays, learning-based action recognition and segmentation approaches outperform classical methods, relying, however, on large, annotated datasets. Furthermore, action recognition and tool segmentation algorithms are often trained and make predictions in isolation from each other, without exploiting potential cross-task relationships. With the EndoVis 2022 SAR-RARP50 challenge, we release the first multimodal, publicly available, in-vivo, dataset for surgical action recognition and semantic instrumentation segmentation, containing 50 suturing video segments of Robotic Assisted Radical Prostatectomy (RARP). The aim of the challenge is twofold. First, to enable researchers to leverage the scale of the provided dataset and develop robust and highly accurate single-task action recognition and tool segmentation approaches in the surgical domain. Second, to further explore the potential of multitask-based learning approaches and determine their comparative advantage against their single-task counterparts. A total of 12 teams participated in the challenge, contributing 7 action recognition methods, 9 instrument segmentation techniques, and 4 multitask approaches that integrated both action recognition and instrument segmentation.
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