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Tracking Everything in Robotic-Assisted Surgery

29 September 2024
Bohan Zhan
Wang Zhao
Yi Fang
Bo Du
Francisco Vasconcelos
Danail Stoyanov
Daniel Elson
Baoru Huang
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Abstract

Accurate tracking of tissues and instruments in videos is crucial for Robotic-Assisted Minimally Invasive Surgery (RAMIS), as it enables the robot to comprehend the surgical scene with precise locations and interactions of tissues and tools. Traditional keypoint-based sparse tracking is limited by featured points, while flow-based dense two-view matching suffers from long-term drifts. Recently, the Tracking Any Point (TAP) algorithm was proposed to overcome these limitations and achieve dense accurate long-term tracking. However, its efficacy in surgical scenarios remains untested, largely due to the lack of a comprehensive surgical tracking dataset for evaluation. To address this gap, we introduce a new annotated surgical tracking dataset for benchmarking tracking methods for surgical scenarios, comprising real-world surgical videos with complex tissue and instrument motions. We extensively evaluate state-of-the-art (SOTA) TAP-based algorithms on this dataset and reveal their limitations in challenging surgical scenarios, including fast instrument motion, severe occlusions, and motion blur, etc. Furthermore, we propose a new tracking method, namely SurgMotion, to solve the challenges and further improve the tracking performance. Our proposed method outperforms most TAP-based algorithms in surgical instruments tracking, and especially demonstrates significant improvements over baselines in challenging medical videos. Our code and dataset are available atthis https URL.

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@article{zhan2025_2409.19821,
  title={ Tracking Everything in Robotic-Assisted Surgery },
  author={ Bohan Zhan and Wang Zhao and Yi Fang and Bo Du and Francisco Vasconcelos and Danail Stoyanov and Daniel S. Elson and Baoru Huang },
  journal={arXiv preprint arXiv:2409.19821},
  year={ 2025 }
}
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