Papers
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.

AI-generated summary

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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