Shuffle Mamba: State Space Models with Random Shuffle for Multi-Modal Image Fusion
The paper proposes Shuffle Mamba, a novel multi-modal image fusion framework that employs a Bayesian-inspired Random Shuffle scanning strategy and its inverse to eliminate biases from fixed scanning patterns, thereby achieving robust cross-modality interaction and superior fusion quality through Monte-Carlo averaging.