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A survey on representation-based classification and detection in hyperspectral remote sensing imagery

机译:高光谱遥感影像中基于表示的分类与检测研究

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This paper reviews the state-of-the-art representation-based classification and detection approaches for hyperspectral remote sensing imagery, including sparse representation-based classification (SRC), collaborative representation-based classification (CRC), and their extensions. In addition to the original SRC and CRC, the related techniques are categorized into the following subsections: (1) representation-based classification with dictionary partition using class-specific labeled samples; (2) representation-based classification with weighted regularization by measuring similarity between each atom and a testing sample; (3) representation-based classification with joint structured models to consider contextual information during recovery optimization; (4) representation using spatial features in a preprocessing or a postprocessing step; (5) representation-based classification in a high-dimensional kernel space through nonlinear mapping; and (6) target and anomaly detection with sparse and collaborative representations. Some open issues and ongoing investigations in this field are also discussed. (C) 2015 Elsevier B.V. All rights reserved.
机译:本文回顾了高光谱遥感影像的基于表示的最新分类和检测方法,包括基于稀疏表示的分类(SRC),基于协作表示的分类(CRC)及其扩展。除了原始的SRC和CRC外,相关技术还分为以下小节:(1)使用特定于类别的标记样本通过字典分区进行基于表示的分类; (2)通过测量每个原子与测试样品之间的相似性,进行加权归一化的基于表示的分类; (3)基于联合表示模型的基于表示的分类,以在优化恢复过程中考虑上下文信息; (4)在预处理或后处理步骤中使用空间特征表示; (5)通过非线性映射在高维核空间中基于表示的分类; (6)稀疏和协作表示的目标和异常检测。还讨论了该领域中一些未解决的问题和正在进行的调查。 (C)2015 Elsevier B.V.保留所有权利。

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