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arxiv:2501.00525

Is Segment Anything Model 2 All You Need for Surgery Video Segmentation? A Systematic Evaluation

Published on Dec 31, 2024
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Abstract

The SAM2 model's performance in zero-shot surgery video segmentation is evaluated across various datasets and configurations, demonstrating its potential despite data limitations.

Surgery video segmentation is an important topic in the surgical AI field. It allows the AI model to understand the spatial information of a surgical scene. Meanwhile, due to the lack of annotated surgical data, surgery segmentation models suffer from limited performance. With the emergence of SAM2 model, a large foundation model for video segmentation trained on natural videos, zero-shot surgical video segmentation became more realistic but meanwhile remains to be explored. In this paper, we systematically evaluate the performance of SAM2 model in zero-shot surgery video segmentation task. We conducted experiments under different configurations, including different prompting strategies, robustness, etc. Moreover, we conducted an empirical evaluation over the performance, including 9 datasets with 17 different types of surgeries.

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