A Shift-Reduced Sample Expansion Domain Generalization Network for Hyperspectral Image Cross-Domain Classification

IF 4.4
Yunxiao Qi;Dongyang Liu;Junping Zhang
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Abstract

In practical applications, the variations in imaging conditions along with changes in ground object states cause spectral shifts within the same class across different domains of hyperspectral images (HSIs), resulting in substantial domain distribution discrepancies. Additionally, the annotation process for HSIs is time-consuming, yielding an insufficient amount of labeled data relative to the needs of strong models, making them prone to overfitting during training. To address these issues, the shift-reduced sample expansion domain generalization network (SSEDGnet) is proposed. Sample diversity is first enhanced by generating expanded domain (ED) samples. Then, feature extraction is jointly performed on multiple source-domain (SD) samples and ED samples to learn domain-invariant representations, which enhances adaptability to unseen target domains (TDs). Specifically, by modeling the full imaging process from stimulation to response, including signal transmission and ground object reflection, the ground object reflection is separately extracted and used to directly generate ED samples through stimulation, thereby obtaining samples with reduced domain shift. Subsequently, feature extraction and fusion at different levels are carried out on both the SDs and EDs. Finally, the classifier conducts the classification. The experimental results on four public HSI datasets show that the proposed method effectively learns a model with superior generalization ability and stability, outperforming state-of-the-art methods. The code will be released soon on the site of https://github.com/Cherrieqi/SSEDGnet
高光谱图像跨域分类的平移减少样本扩展域泛化网络
在实际应用中,成像条件的变化以及地物状态的变化会导致高光谱图像(hsi)不同域内同一类别的光谱偏移,从而导致较大的域分布差异。此外,hsi的注释过程非常耗时,相对于强模型的需求,生成的标记数据量不足,使它们在训练过程中容易出现过拟合。为了解决这些问题,提出了平移缩减样本扩展域泛化网络(SSEDGnet)。首先通过生成扩展域(ED)样品来增强样品多样性。然后,对多个源域(SD)样本和ED样本进行联合特征提取,学习域不变表示,增强了对未知目标域(td)的适应性。具体而言,通过模拟从刺激到响应的整个成像过程,包括信号传输和地物反射,将地物反射单独提取,并通过刺激直接生成ED样品,从而获得域移减小的样品。随后,分别对SDs和EDs进行不同层次的特征提取和融合。最后,分类器进行分类。在4个公共HSI数据集上的实验结果表明,该方法有效地学习了一个具有良好泛化能力和稳定性的模型,优于现有的方法。该代码将很快在https://github.com/Cherrieqi/SSEDGnet网站上发布
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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