邻域对比学习增强高光谱图像分类的标签噪声鲁棒性

IF 4.4
Yuanzhuo Xu;Tao Peng;Shaowu Wu;Ruiyi Su;Xiaoguang Niu
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引用次数: 0

摘要

高光谱图像分类(HIC)的最新进展依赖于高质量的注释,因此不可避免地受到噪声标签的影响。为了解决噪声标签的负面影响,一些方法采用邻域样本来选择干净样本,并展示了有希望的结果。然而,它们通常依赖于鲁棒特征提取,并且在高噪声比下仍然受到限制。为了克服这些局限性,我们提出了一种基于鲁棒对比学习和邻域特征建模的鲁棒样本选择和校正方法。该方法采用双分支频谱-空间网络,结合空间残差关注模块和信道残差关注模块提取鲁棒特征。此外,在特征和logit水平上引入无监督对比学习来增强特征提取器。最后,结合基于特征空间邻域一致性的干净样本选择策略和基于最大置信度的重标注方案来抵抗噪声标签。在公开可用的高光谱数据集上进行的大量实验,包括休斯顿和印第安松,证明了所提出的方法的优越性能,特别是在高噪声比下,观察到分类精度的显著提高。代码可在https://github.com/kovelxyz/RSC上获得
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Label Noise Robustness for Hyperspectral Image Classification by Neighborhood Contrastive Learning
Recent advancements in hyperspectral image classification (HIC) rely on high-quality annotations and thus inevitably suffer from noisy labels. To address the negative effects of noisy labels, some methods employ neighborhood samples to select clean samples and demonstrate promising results. However, they typically rely on robust feature extraction and remain limited under high noise ratios. To overcome the limitations, we propose a novel robust sample selection and correction method based on robust contrastive learning and neighborhood feature modeling. The proposed RSC adopts a dual-branch spectral–spatial network combining spatial and channel-based residual attention modules to extract robust feature. Furthermore, unsupervised contrastive learning at both feature and logit level is introduced to bolster the feature extractor. Finally, a clean sample selection strategy based on neighborhood consistency in feature space and relabeling scheme by the maximum confidence are integrated to resist the noisy labels. Extensive experiments conducted on publicly available hyperspectral datasets, including Houston and Indian Pines, demonstrate the superior performance of the proposed method, particularly in high noise ratios, where substantial improvements in classification accuracy are observed. The code is available at https://github.com/kovelxyz/RSC
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