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Discriminative Low-Rank Gabor Filtering for Spectral–Spatial Hyperspectral Image Classification

机译:区分性低秩Gabor滤波用于光谱空间高光谱图像分类

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Spectral–spatial classification of remotely sensed hyperspectral images has attracted a lot of attention in recent years. Although Gabor filtering has been used for feature extraction from hyperspectral images, its capacity to extract relevant information from both the spectral and the spatial domains of the image has not been fully explored yet. In this paper, we present a new discriminative low-rank Gabor filtering (DLRGF) method for spectral–spatial hyperspectral image classification. A main innovation of the proposed approach is that our implementation is accomplished by decomposing the standard 3-D spectral–spatial Gabor filter into eight subfilters, which correspond to different combinations of low-pass and bandpass single-rank filters. Then, we show that only one of the subfilters (i.e., the one that performs low-pass spatial filtering and bandpass spectral filtering) is actually appropriate to extract suitable features based on the characteristics of hyperspectral images. This allows us to perform spectral–spatial classification in a highly discriminative and computationally efficient way, by significantly decreasing the computational complexity (from cubic to linear order) compared with the 3-D spectral–spatial Gabor filter. In order to theoretically prove the discriminative ability of the selected subfilter, we derive an overall classification risk bound to evaluate the discriminating abilities of the features provided by the different subfilters. Our experimental results, conducted using different hyperspectral images, indicate that the proposed DLRGF method exhibits significant improvements in terms of classification accuracy and computational performance when compared with the 3-D spectral–spatial Gabor filter and other state-of-the-art spectral–spatial classification methods.
机译:近年来,遥感高光谱图像的光谱空间分类引起了很多关注。尽管Gabor滤波已用于从高光谱图像中提取特征,但尚未充分探索其从图像的光谱域和空间域中提取相关信息的能力。在本文中,我们提出了一种新的可分辨低秩Gabor滤波(DLRGF)方法,用于光谱空间高光谱图像分类。所提出方法的主要创新在于,我们的实现是通过将标准3D光谱空间Gabor滤波器分解为八个子滤波器来完成的,这八个子滤波器分别对应于低通和带通单秩滤波器的不同组合。然后,我们表明只有一个子滤波器(即执行低通空间滤波和带通光谱滤波的子滤波器)实际上适合根据高光谱图像的特征提取合适的特征。与3-D光谱空间Gabor滤波器相比,这可以通过显着降低计算复杂度(从三次到线性顺序),以高度区分和计算高效的方式执行光谱空间分类。为了从理论上证明所选子过滤器的区分能力,我们导出了一个整体分类风险,以评估不同子过滤器提供的特征的区分能力。我们使用不同的高光谱图像进行的实验结果表明,与3-D光谱空间Gabor滤波器和其他最新光谱技术相比,拟议的DLRGF方法在分类准确性和计算性能方面显示出显着的提高空间分类方法。

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