SynPo: Boosting Training-Free Few-Shot Medical Segmentation via High-Quality Negative Prompts
SynPo: Boosting Training-Free Few-Shot Medical Segmentation via High-Quality Negative Prompts
The advent of Large Vision Models (LVMs) offers new opportunities for few-shot medical image segmentation. However, existing training-free methods based on LVMs fail to effectively utilize negative prompts, leading to poor performance on low-contrast medical images. To address this issue, we propose SynPo, a training-free few-shot method based on LVMs (e.g., SAM), with the core insight: improving the quality of negative prompts. To select point prompts in a more reliable confidence map, we design a novel Confidence Map Synergy Module by combining the strengths of DINOv2 and SAM. Based on the confidence map, we select the top-k pixels as the positive points set and choose the negative points set using a Gaussian distribution, followed by independent K-means clustering for both sets. Then, these selected points are leveraged as high-quality prompts for SAM to get the segmentation results. Extensive experiments demonstrate that SynPo achieves performance comparable to state-of-the-art training-based few-shot methods.
Yufei Liu、Haoke Xiao、Jiaxing Chai、Yongcun Zhang、Rong Wang、Zijie Meng、Zhiming Luo
医学研究方法基础医学
Yufei Liu,Haoke Xiao,Jiaxing Chai,Yongcun Zhang,Rong Wang,Zijie Meng,Zhiming Luo.SynPo: Boosting Training-Free Few-Shot Medical Segmentation via High-Quality Negative Prompts[EB/OL].(2025-06-20)[2025-07-21].https://arxiv.org/abs/2506.15153.点此复制
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