用于多源遥感数据跨场景分类的图嵌入类间关系感知自适应网络

Teng Yang;Song Xiao;Jiahui Qu;Wenqian Dong;Qian Du;Yunsong Li
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引用次数: 0

摘要

基于无监督域自适应(UDA)的跨场景遥感图像分类最近成为一个颇具吸引力的研究课题,因为它是利用来自另一场景的标记良好的数据进行无监督场景分类的有效解决方案。尽管 UDA 在减少领域偏移方面表现出色,但在多源数据场景中却受到几个关键挑战的阻碍。首先,多源数据固有的异质性使域对齐变得复杂。第二个挑战是由于忽略了全局信息的贡献而导致特征分布的不完整呈现。第三个挑战是在建立目标域条件分布时出现错误,导致配准不准确。由于 UDA 不能保证两个域的分布完全一致,因此使用简单分类器的网络仍然会受到域偏移的影响,导致性能不佳。在本文中,我们提出了一种用于多源遥感数据无监督分类的图嵌入类间关系感知自适应网络(GeIraA-Net),它通过利用对齐特征感知类间关系,促进了两个域的类级知识转移。更具体地说,它构建了一个基于图的渐进式分层特征提取网络,能够捕捉多源数据的局部和全局特征,从而在统一的特征空间内整合综合领域信息。针对数据分布不精确的配准问题,设计了一种联合去扰配准策略,利用三步伪标签生成模块获得的特征进行更精细的领域配准。此外,还构建了基于类间拓扑结构的自适应分类器,通过使分类器域在类别级别上自适应,进一步提高分类精度。实验结果表明,与目前最先进的跨场景分类方法相比,GeIraA-Net 具有显著的优势。
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Graph Embedding Interclass Relation-Aware Adaptive Network for Cross-Scene Classification of Multisource Remote Sensing Data
The unsupervised domain adaptation (UDA) based cross-scene remote sensing image classification has recently become an appealing research topic, since it is a valid solution to unsupervised scene classification by exploiting well-labeled data from another scene. Despite its good performance in reducing domain shifts, UDA in multisource data scenarios is hindered by several critical challenges. The first one is the heterogeneity inherent in multisource data complicates domain alignment. The second challenge is the incomplete representation of feature distribution caused by the neglect of the contribution from global information. The third challenge is the inaccuracies in alignment due to errors in establishing target domain conditional distributions. Since UDA does not guarantee the complete consistency of the distribution of the two domains, networks using simple classifiers are still affected by domain shifts, resulting in poor performance. In this paper, we propose a graph embedding interclass relation-aware adaptive network (GeIraA-Net) for unsupervised classification of multi-source remote sensing data, which facilitates knowledge transfer at the class level for two domains by leveraging aligned features to perceive inter-class relation. More specifically, a graph-based progressive hierarchical feature extraction network is constructed, capable of capturing both local and global features of multisource data, thereby consolidating comprehensive domain information within a unified feature space. To deal with the imprecise alignment of data distribution, a joint de-scrambling alignment strategy is designed to utilize the features obtained by a three-step pseudo-label generation module for more delicate domain calibration. Moreover, an adaptive inter-class topology based classifier is constructed to further improve the classification accuracy by making the classifier domain adaptive at the category level. The experimental results show that GeIraA-Net has significant advantages over the current state-of-the-art cross-scene classification methods.
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