Cross-scene hyperspectral image classification aims to identify a new scene in target domain via learned knowledge from source domain using limited training samples. Existing cross-scene alignment approaches focus on aligning the global feature distribution between the source and target domains while overlooking the fine-grained alignment at different levels. Moreover, they mainly use Transformer architectures to model long-range dependencies across different channels but confront efficiency challenges due to their quadratic complexity, which limits classification performance in unsupervised domain adaptation tasks. To address these issues, a new domain-adaptive Mamba (DAMamba) is proposed for cross-scene hyperspectral image classification. First, a spectral-spatial Mamba is developed to extract high-order semantic features from the input data. Then, a domain-invariant prototype alignment method is proposed from three perspectives, i.e., intra-domain, inter-domain, and mini-batch, to produce reliable pseudo-labels and mitigate the spectral shift between the source and target domains. Finally, a fully connected layer is applied to the aligned features in the target domain to obtain the final classification results. Extensive evaluations across diverse cross-scene datasets demonstrate that our DAMamba outperforms existing state-of-the-art methods in classification accuracy and computing time. The code of this paper is available at https://github.com/PuhongDuan/DAMamba.
Duan et al. (Thu,) studied this question.