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基于结构优化传输的高光谱和激光雷达数据分类

Hyperspectral and LiDAR Data Classification Based on Structural Optimization Transmission.

作者信息

Zhang Mengmeng, Li Wei, Zhang Yuxiang, Tao Ran, Du Qian

出版信息

IEEE Trans Cybern. 2023 May;53(5):3153-3164. doi: 10.1109/TCYB.2022.3169773. Epub 2023 Apr 21.

DOI:10.1109/TCYB.2022.3169773
PMID:35560096
Abstract

With the development of the sensor technology, complementary data of different sources can be easily obtained for various applications. Despite the availability of adequate multisource observation data, for example, hyperspectral image (HSI) and light detection and ranging (LiDAR) data, existing methods may lack effective processing on structural information transmission and physical properties alignment, weakening the complementary ability of multiple sources in the collaborative classification task. The complementary information collaboration manner and the redundancy exclusion operator need to be redesigned for strengthening the semantic relatedness of multisources. As a remedy, we propose a structural optimization transmission framework, namely, structural optimization transmission network (SOT-Net), for collaborative land-cover classification of HSI and LiDAR data. Specifically, the SOT-Net is developed with three key modules: 1) cross-attention module; 2) dual-modes propagation module; and 3) dynamic structure optimization module. Based on above designs, SOT-Net can take full advantage of the reflectance-specific information of HSI and the detailed edge (structure) representations of multisource data. The inferred transmission plan, which integrates a self-alignment regularizer into the classification task, enhances the robustness of the feature extraction and classification process. Experiments show consistent outperformance of SOT-Net over baselines across three benchmark remote sensing datasets, and the results also demonstrate that the proposed framework can yield satisfying classification result even with small-size training samples.

摘要

随着传感器技术的发展,可以轻松获取不同来源的补充数据以用于各种应用。尽管有足够的多源观测数据,例如高光谱图像(HSI)和光探测与测距(LiDAR)数据,但现有方法可能在结构信息传输和物理属性对齐方面缺乏有效的处理,从而削弱了多源在协同分类任务中的互补能力。需要重新设计互补信息协作方式和冗余排除算子,以加强多源的语义相关性。作为一种补救措施,我们提出了一种结构优化传输框架,即结构优化传输网络(SOT-Net),用于HSI和LiDAR数据的协同土地覆盖分类。具体而言,SOT-Net由三个关键模块开发而成:1)交叉注意力模块;2)双模式传播模块;3)动态结构优化模块。基于上述设计,SOT-Net可以充分利用HSI的反射率特定信息和多源数据的详细边缘(结构)表示。推断出的传输计划将自对齐正则化器集成到分类任务中,增强了特征提取和分类过程的鲁棒性。实验表明,在三个基准遥感数据集上,SOT-Net始终优于基线,结果还表明,即使使用小尺寸训练样本,所提出的框架也能产生令人满意的分类结果。

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