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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Support Tensor Machines for Classification of Hyperspectral Remote Sensing Imagery
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Support Tensor Machines for Classification of Hyperspectral Remote Sensing Imagery

机译:支持张量机用于高光谱遥感影像分类

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In recent years, the support vector machines (SVMs) have been very successful in remote sensing image classification, particularly when dealing with high-dimensional data and limited training samples. Nevertheless, the vector-based feature alignment of the SVM can lead to an information loss in representation of hyperspectral images, which intrinsically have a tensor-based data structure. In this paper, a new multiclass support tensor machine (STM) is specifically developed for hyperspectral image classification. Our newly proposed STM processes the hyperspectral image as a data cube and then identifies the information classes in tensor space. The multiclass STM is developed from a set of binary STM classifiers using the parallel strategy. As a part of our tensor-based processing chain, a multilinear principal component analysis (MPCA) is used for preprocessing, in order to reduce the tensorial data redundancy and, at the same time, preserve the tensorial structure information in sparse and high-order subspaces. As a result, the contributions of this work are twofold: a new multiclass STM model for hyperspectral image classification is developed, and a tensorial image interpretation framework is constructed, which provides a system consisting of tensor-based feature representation, feature extraction, and classification. Experiments with four hyperspectral data sets, covering agricultural and urban areas, are conducted to validate the effectiveness of the proposed framework. Our experimental results show that the proposed STM and MPCA-STM can achieve better results than traditional SVM-based classifiers.
机译:近年来,支持向量机(SVM)在遥感图像分类中非常成功,特别是在处理高维数据和有限的训练样本时。然而,SVM的基于矢量的特征对齐可能导致高光谱图像表示中的信息丢失,而高光谱图像本质上具有基于张量的数据结构。在本文中,专门为高光谱图像分类开发了一种新的多类支持张量机(STM)。我们新提出的STM将高光谱图像作为数据立方体进行处理,然后识别张量空间中的信息类别。使用并行策略从一组二进制STM分类器中开发出多类STM。作为基于张量的处理链的一部分,多线性主成分分析(MPCA)用于预处理,以减少张量数据冗余,同时保留稀疏和高阶的张量结构信息子空间。结果,这项工作有两个方面:开发了用于高光谱图像分类的新的多类STM模型,并构建了张量图像解释框架,该框架提供了一个由基于张量的特征表示,特征提取和分类组成的系统。 。进行了涵盖农业和城市地区的四个高光谱数据集的实验,以验证所提出框架的有效性。我们的实验结果表明,与传统的基于SVM的分类器相比,所提出的STM和MPCA-STM可以获得更好的结果。

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