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Tensor Discriminant Analysis via Compact Feature Representation for Hyperspectral Images Dimensionality Reduction

机译:通过紧凑特征表示的张量判别分析用于高光谱图像降维

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Dimensionality reduction is of great importance which aims at reducing the spectral dimensionality while keeping the desirable intrinsic structure information of hyperspectral images. Tensor analysis which can retain both spatial and spectral information of hyperspectral images has caused more and more concern in the field of hyperspectral images processing. In general, a desirable low dimensionality feature representation should be discriminative and compact. To achieve this, a tensor discriminant analysis model via compact feature representation (TDA-CFR) was proposed in this paper. In TDA-CFR, the traditional linear discriminant analysis was extended to tensor space to make the resulting feature representation more informative and discriminative. Furthermore, TDA-CFR redefines the feature representation of each spectral band by employing the tensor low rank decomposition framework which leads to a more compact representation.
机译:降维非常重要,其目的在于降低光谱维数,同时保持所需的高光谱图像固有结构信息。能够同时保留高光谱图像的空间和光谱信息的张量分析引起了高光谱图像处理领域的越来越多的关注。通常,理想的低维特征表示应具有判别力和紧凑性。为此,本文提出了一种基于紧凑特征表示的张量判别分析模型(TDA-CFR)。在TDA-CFR中,传统的线性判别分析已扩展到张量空间,以使所得特征表示更具信息量和判别力。此外,TDA-CFR通过使用张量低秩分解框架重新定义了每个光谱带的特征表示,这导致了更紧凑的表示。

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