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Spatial–Spectral Regularized Local Scaling Cut for Dimensionality Reduction in Hyperspectral Image Classification

机译:空间光谱正则化局部缩放切割用于高光谱图像分类中的降维

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摘要

Dimensionality reduction (DR) methods have attracted extensive attention to provide discriminative information and reduce the computational burden of hyperspectral image (HSI) classification. However, the DR methods face many challenges due to limited training samples with high-dimensional spectra. To address this issue, a graph-based spatial and spectral regularized local scaling cut (SSRLSC) for DR of HSI data is proposed. The underlying idea of the proposed method is to utilize the information from both the spectral and spatial domains to achieve better classification accuracy than its spectral domain counterpart. In SSRLSC, a guided filter is initially used to smoothen and homogenize the pixels of the HSI data in order to preserve the pixel consistency. This is followed by generation of between-class and within-class dissimilarity matrices in both spectral and spatial domains by regularized local scaling cut and neighboring pixel local scaling cut, respectively. Finally, we obtain the projection matrix by optimizing the updated spatial-spectral between-class and total-class dissimilarity. The effectiveness of the proposed DR algorithm is illustrated with two popular real-world HSI data sets.
机译:降维(DR)方法已引起广泛关注,以提供区分性信息并减少高光谱图像(HSI)分类的计算负担。然而,由于有限的高维光谱训练样本,DR方法面临许多挑战。为了解决这个问题,提出了一种针对HSI数据的DR的基于图的空间和频谱正则化局部缩放切割(SSRLSC)。所提出方法的基本思想是利用来自光谱域和空间域的信息来获得比其光谱域对应物更好的分类精度。在SSRLSC中,最初使用导引滤波器对HSI数据的像素进行平滑和均化,以保持像素一致性。接下来,分别通过规则化局部缩放切割和相邻像素局部缩放切割在频谱和空间域中生成类间和类内不相似性矩阵。最后,我们通过优化更新后的空间光谱之间的类间差异和总类间差异来获得投影矩阵。通过两个流行的现实世界HSI数据集说明了所提出的DR算法的有效性。

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