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Main Authors: Chen, Taiqin, Wang, Yifeng, Feng, Xiaochen, Zhu, Zhilin, Sha, Hao, Li, Yingjian, Zhang, Yongbing
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.16662
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author Chen, Taiqin
Wang, Yifeng
Feng, Xiaochen
Zhu, Zhilin
Sha, Hao
Li, Yingjian
Zhang, Yongbing
author_facet Chen, Taiqin
Wang, Yifeng
Feng, Xiaochen
Zhu, Zhilin
Sha, Hao
Li, Yingjian
Zhang, Yongbing
contents While hyperspectral images (HSI) benefit from numerous spectral channels that provide rich information for classification, the increased dimensionality and sensor variability make them more sensitive to distributional discrepancies across domains, which in turn can affect classification performance. To tackle this issue, hyperspectral single-source domain generalization (SDG) typically employs data augmentation to simulate potential domain shifts and enhance model robustness under the condition of single-source domain training data availability. However, blind augmentation may produce samples misaligned with real-world scenarios, while excessive emphasis on realism can suppress diversity, highlighting a tradeoff between realism and diversity that limits generalization to target domains. To address this challenge, we propose a spectral property-driven data augmentation (SPDDA) that explicitly accounts for the inherent properties of HSI, namely the device-dependent variation in the number of spectral channels and the mixing of adjacent channels. Specifically, SPDDA employs a spectral diversity module that resamples data from the source domain along the spectral dimension to generate samples with varying spectral channels, and constructs a channel-wise adaptive spectral mixer by modeling inter-channel similarity, thereby avoiding fixed augmentation patterns. To further enhance the realism of the augmented samples, we propose a spatial-spectral co-optimization mechanism, which jointly optimizes a spatial fidelity constraint and a spectral continuity self-constraint. Moreover, the weight of the spectral self-constraint is adaptively adjusted based on the spatial counterpart, thus preventing over-smoothing in the spectral dimension and preserving spatial structure. Extensive experiments conducted on three remote sensing benchmarks demonstrate that SPDDA outperforms state-of-the-art methods.
format Preprint
id arxiv_https___arxiv_org_abs_2603_16662
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Spectral Property-Driven Data Augmentation for Hyperspectral Single-Source Domain Generalization
Chen, Taiqin
Wang, Yifeng
Feng, Xiaochen
Zhu, Zhilin
Sha, Hao
Li, Yingjian
Zhang, Yongbing
Computer Vision and Pattern Recognition
While hyperspectral images (HSI) benefit from numerous spectral channels that provide rich information for classification, the increased dimensionality and sensor variability make them more sensitive to distributional discrepancies across domains, which in turn can affect classification performance. To tackle this issue, hyperspectral single-source domain generalization (SDG) typically employs data augmentation to simulate potential domain shifts and enhance model robustness under the condition of single-source domain training data availability. However, blind augmentation may produce samples misaligned with real-world scenarios, while excessive emphasis on realism can suppress diversity, highlighting a tradeoff between realism and diversity that limits generalization to target domains. To address this challenge, we propose a spectral property-driven data augmentation (SPDDA) that explicitly accounts for the inherent properties of HSI, namely the device-dependent variation in the number of spectral channels and the mixing of adjacent channels. Specifically, SPDDA employs a spectral diversity module that resamples data from the source domain along the spectral dimension to generate samples with varying spectral channels, and constructs a channel-wise adaptive spectral mixer by modeling inter-channel similarity, thereby avoiding fixed augmentation patterns. To further enhance the realism of the augmented samples, we propose a spatial-spectral co-optimization mechanism, which jointly optimizes a spatial fidelity constraint and a spectral continuity self-constraint. Moreover, the weight of the spectral self-constraint is adaptively adjusted based on the spatial counterpart, thus preventing over-smoothing in the spectral dimension and preserving spatial structure. Extensive experiments conducted on three remote sensing benchmarks demonstrate that SPDDA outperforms state-of-the-art methods.
title Spectral Property-Driven Data Augmentation for Hyperspectral Single-Source Domain Generalization
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.16662