Are General-Purpose Vision Models All We Need for 2D Medical Image Segmentation? A Cross-Dataset Empirical Study
arXiv cs.CV / 3/16/2026
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Key Points
- The paper conducts a controlled empirical comparison between eleven specialized MIS architectures (SMAs) and general-purpose vision models (GP-VMs) using a unified protocol across three diverse MIS datasets.
- GP-VMs outperform the majority of SMAs on the analyzed MIS tasks, suggesting they can be a viable alternative for end-to-end 2D medical image segmentation.
- Grad-CAM based XAI analysis shows GP-VMs highlight clinically relevant structures without requiring domain-specific architectural design.
- The authors release code and resources on GitHub to support replication and adoption of GP-VMs in MIS research and applications.
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