AFFSegNet: Adaptive Feature Fusion Segmentation Network for Microtumors and Multi-Organ Segmentation
Medical image segmentation, a crucial task in computer vision, facilitates the automated delineation of anatomical structures and pathologies, supporting clinicians in diagnosis, treatment planning, and disease monitoring. Notably, transformers employing shifted window-based self-attention have demo...
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Zusammenfassung: | Medical image segmentation, a crucial task in computer vision, facilitates
the automated delineation of anatomical structures and pathologies, supporting
clinicians in diagnosis, treatment planning, and disease monitoring. Notably,
transformers employing shifted window-based self-attention have demonstrated
exceptional performance. However, their reliance on local window attention
limits the fusion of local and global contextual information, crucial for
segmenting microtumors and miniature organs. To address this limitation, we
propose the Adaptive Semantic Segmentation Network (ASSNet), a transformer
architecture that effectively integrates local and global features for precise
medical image segmentation. ASSNet comprises a transformer-based U-shaped
encoder-decoder network. The encoder utilizes shifted window self-attention
across five resolutions to extract multi-scale features, which are then
propagated to the decoder through skip connections. We introduce an augmented
multi-layer perceptron within the encoder to explicitly model long-range
dependencies during feature extraction. Recognizing the constraints of
conventional symmetrical encoder-decoder designs, we propose an Adaptive
Feature Fusion (AFF) decoder to complement our encoder. This decoder
incorporates three key components: the Long Range Dependencies (LRD) block, the
Multi-Scale Feature Fusion (MFF) block, and the Adaptive Semantic Center (ASC)
block. These components synergistically facilitate the effective fusion of
multi-scale features extracted by the decoder while capturing long-range
dependencies and refining object boundaries. Comprehensive experiments on
diverse medical image segmentation tasks, including multi-organ, liver tumor,
and bladder tumor segmentation, demonstrate that ASSNet achieves
state-of-the-art results. Code and models are available at:
\url{https://github.com/lzeeorno/ASSNet}. |
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DOI: | 10.48550/arxiv.2409.07779 |