Attention-Mamba: A Mamba-Enhanced Multi-Scale Parallel Inference Network for Medical Image Segmentation
Yanhua Zhang, Ke Zhang, Jingyu Wang, Gabriella Balestra, Samanta Rosati, Yulin Wu, Wuwei Wang, Valentina Giannini

TL;DR
This paper introduces Attention-Mamba, a multi-scale parallel inference network enhanced with Mamba, achieving superior medical image segmentation across multiple modalities with high efficiency and novel hierarchical global representations.
Contribution
The work proposes a parallel multi-scale architecture integrated with Mamba and a Recursive Alignment Module for improved segmentation performance and efficiency.
Findings
Achieves highest segmentation accuracy on multiple datasets.
Maintains high efficiency with only 14.05 million parameters.
Outperforms state-of-the-art CNN, Transformer, and Mamba-based models.
Abstract
U-shaped architectures have long dominated the field of medical image segmentation, while Transformers are widely employed for modeling long-range dependencies. The former typically handles scale variations implicitly by aggregating multi-level features, whereas the efficiency of the latter is constrained by its quadratic computational and memory complexity. In this work, we propose an effective alternative to traditional U-shaped architectures by constructing parallel branches at different levels to obtain multi-scale features and corresponding predictions. Furthermore, we enhance our network by integrating Mamba, a state space model that captures long-range dependencies with linear complexity. First, a dual-path architecture with lateral connections aggregates high-level semantic information and low-level spatial details at each branch. Then, we introduce a Recursive Alignment Module…
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