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Spectral-Spatial Hyperspectral Image Classification via Adaptive Total Variation Filtering

机译:通过自适应总变化滤波的光谱空间高光谱图像分类

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摘要

It is unavoidable that existing noise interference in hyperspectral image (HSI). In order to reduce the noise in HSI and obtain a higher classification result, a spectral-spatial HSI classification via adaptive total variation filtering (ATVF) is proposed in this paper, which consists of the following steps: first, the principal component analysis (PCA) method is used for dimension reduction of HSI. Then, the adaptive total variation filtering is performed on the principal components so as to reduce the sensitiveness of noise and obtain a coarse contour feature. Next, the ensemble empirical mode decomposition is used to decompose each spectrum band into serial components, the characteristics of HSI can be further integrated in a transform domain. Finally, a pixel-level classifier (such as SVM) is used for classification of the processed image. The paper analyzes the effect of different parameters of ATVF method on the classification performance in detail, tests the proposed algorithm on the real hyperspectral data sets, and finally verifies the superiority of the proposed algorithm based on a contrastive analysis of different algorithms.
机译:高光谱图像(HSI)中存在不可避免的噪声干扰。为了减少HSI中的噪声并获得更高的分类结果,本文提出了一种通过自适应总变化滤波(ATVF)进行光谱空间HSI分类的方法,该步骤包括以下步骤:首先,主成分分析(PCA) )方法用于减小HSI的尺寸。然后,对主要成分执行自适应总变化滤波,以降低噪声的敏感性并获得粗糙的轮廓特征。接下来,采用综合经验模态分解将每个频谱分解为串行分量,可以将HSI的特征进一步整合到变换域中。最后,像素级分类器(例如SVM)用于对处理后的图像进行分类。本文详细分析了ATVF方法的不同参数对分类性能的影响,在真实的高光谱数据集上测试了该算法,最后通过对不同算法的对比分析,验证了该算法的优越性。

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