Cross-domain Hyperspectral Image Classification based on Bi-directional Domain Adaptation
Yuxiang Zhang, Wei Li, Wen Jia, Mengmeng Zhang, Ran Tao, Shunlin Liang

TL;DR
This paper introduces a novel bi-directional domain adaptation framework using transformer architecture for cross-domain hyperspectral image classification, significantly improving accuracy over existing methods.
Contribution
The paper proposes a new Bi-directional Domain Adaptation framework with a triple-branch transformer and cross-attention mechanisms for enhanced cross-domain hyperspectral image classification.
Findings
BiDA outperforms state-of-the-art domain adaptation methods.
Achieves 3-5% higher accuracy in cross-temporal tree species classification.
Effective in noisy conditions with adaptive reinforcement strategy.
Abstract
Utilizing hyperspectral remote sensing technology enables the extraction of fine-grained land cover classes. Typically, satellite or airborne images used for training and testing are acquired from different regions or times, where the same class has significant spectral shifts in different scenes. In this paper, we propose a Bi-directional Domain Adaptation (BiDA) framework for cross-domain hyperspectral image (HSI) classification, which focuses on extracting both domain-invariant features and domain-specific information in the independent adaptive space, thereby enhancing the adaptability and separability to the target scene. In the proposed BiDA, a triple-branch transformer architecture (the source branch, target branch, and coupled branch) with semantic tokenizer is designed as the backbone. Specifically, the source branch and target branch independently learn the adaptive space of…
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