Hyperspectral image (HSI) clustering groups pixels into clusters without labeled data, which is an important yet challenging task. For large-scale HSIs, most methods rely on superpixel segmentation and perform superpixel-level clustering based on graph neural networks (GNNs). However, existing GNNs cannot fully exploit the spectral information of the input HSI, and the inaccurate superpixel topological graph may lead to the confusion of different class semantics during information aggregation. To address these challenges, we first propose a structural-spectral graph convolutional operator (SSGCO) tailored for graph-structured HSI superpixels to improve their representation quality through the co-extraction of spatial and spectral features. Second, we propose an evidence-guided adaptive edge learning (EGAEL) module that adaptively predicts and refines edge weights in the superpixel topological graph. We integrate the proposed method into a contrastive learning framework to achieve clustering, where representation learning and clustering are simultaneously conducted. Experiments demonstrate that the proposed method improves clustering accuracy by 2.61%, 6.06%, 4.96% and 3.15% over the best compared methods on four HSI datasets. Our code is available at https://github.com/jhqi/SSGCO-EGAEL.
翻译:高光谱图像(HSI)聚类是一种在无标签数据条件下将像素分组为簇的重要且具有挑战性的任务。对于大规模高光谱图像,现有方法大多依赖超像素分割,并基于图神经网络(GNNs)在超像素层面进行聚类。然而,现有图神经网络未能充分利用输入高光谱图像的谱信息,且不精确的超像素拓扑图可能导致信息聚合过程中不同类别语义的混淆。为解决这些挑战,我们首先提出一种专为图结构高光谱图像超像素设计的结构-谱图卷积算子(SSGCO),通过联合提取空间与谱特征以提升其表征质量。其次,我们提出一种证据引导的自适应边缘学习(EGAEL)模块,能够自适应地预测并优化超像素拓扑图中的边权重。我们将所提方法整合至对比学习框架中以实现聚类,其中表征学习与聚类同步进行。实验表明,在四个高光谱图像数据集上,所提方法相较于最优对比方法的聚类准确率分别提升了2.61%、6.06%、4.96%和3.15%。代码已开源:https://github.com/jhqi/SSGCO-EGAEL。