Mamba Guided Boundary Prior Matters: A New Perspective for Generalized Polyp Segmentation
Journal:
arXiv
Published Date:
Jul 2, 2025
Abstract
Polyp segmentation in colonoscopy images is crucial for early detection and
diagnosis of colorectal cancer. However, this task remains a significant
challenge due to the substantial variations in polyp shape, size, and color, as
well as the high similarity between polyps and surrounding tissues, often
compounded by indistinct boundaries. While existing encoder-decoder CNN and
transformer-based approaches have shown promising results, they struggle with
stable segmentation performance on polyps with weak or blurry boundaries. These
methods exhibit limited abilities to distinguish between polyps and non-polyps
and capture essential boundary cues. Moreover, their generalizability still
falls short of meeting the demands of real-time clinical applications. To
address these limitations, we propose SAM-MaGuP, a groundbreaking approach for
robust polyp segmentation. By incorporating a boundary distillation module and
a 1D-2D Mamba adapter within the Segment Anything Model (SAM), SAM-MaGuP excels
at resolving weak boundary challenges and amplifies feature learning through
enriched global contextual interactions. Extensive evaluations across five
diverse datasets reveal that SAM-MaGuP outperforms state-of-the-art methods,
achieving unmatched segmentation accuracy and robustness. Our key innovations,
a Mamba-guided boundary prior and a 1D-2D Mamba block, set a new benchmark in
the field, pushing the boundaries of polyp segmentation to new heights.