Matis: masked-attention transformers for surgical instrument segmentation

Nicolas Ayobi, Alejandra Perez-Rondon, Santiago Rodriguez,Pablo Arbelaez

2023 IEEE 20TH INTERNATIONAL SYMPOSIUM ON BIOMEDICAL IMAGING, ISBI(2023)

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摘要
We propose Masked-Attention Transformers for Surgical Instrument Segmentation (MATIS), a two-stage, fully transformer-based method that leverages modern pixel-wise attention mechanisms for instrument segmentation. MATIS exploits the instance-level nature of the task by employing a masked attention module that generates and classifies a set of fine instrument region proposals. Our method incorporates long-term video-level information through video transformers to improve temporal consistency and enhance mask classification. We validate our approach in the two standard public benchmarks, Endovis 2017 and Endovis 2018. Our experiments demonstrate thatMATIS' per-frame baseline outperforms previous state-ofthe-art methods and that including our temporal consistency module boosts our model's performance further.
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关键词
Instrument Segmentation,Robot-Assisted Surgery,Computer Assisted Interventions,Transformers,Deep Learning
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