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首页> 外文期刊>Geoscience and Remote Sensing Letters, IEEE >Spectral Similarity Measure Using Frequency Spectrum for Hyperspectral Image Classification
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Spectral Similarity Measure Using Frequency Spectrum for Hyperspectral Image Classification

机译:使用频谱的光谱相似性度量用于高光谱图像分类

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摘要

A novel spectral similarity measure approach, which is named spectral frequency spectrum difference (SFSD), is proposed for hyperspectral image classification based on the frequency spectrum of spectral signature using the Fourier transform. Many important characteristics of spectral signature can be clearly reflected in the frequency spectrum. Therefore, the spectral similarity is defined as the frequency spectrum's difference between the target and reference signatures. The frequency spectrum analysis in this study suggests that the magnitude values of the first few low-frequency components for spectral signature can effectively represent the spectral similarity. To balance the difference between the low- and high-frequency components, the frequency spectrum of the target spectral signature is taken as the normalized factor in the SFSD method. Next, the U.S. Geological Survey spectral data and two hyperspectral remote sensing images were employed as test data in our validation experiments. The new SFSD proposed here was compared with the leading approaches in terms of the spectral discriminability and classification accuracy. Results show that the SFSD exhibits a relatively better performance and has more robust applications for hyperspectral image classification.
机译:提出了一种新的光谱相似性度量方法,称为 光谱频谱差异 (SFSD),用于基于光谱特征频谱的傅立叶变换对高光谱图像进行分类。 。频谱签名的许多重要特征可以清楚地反映在频谱中。因此,频谱相似度定义为目标签名和参考签名之间的频谱差异。本研究中的频谱分析表明,用于频谱签名的前几个低频分量的幅度值可以有效地表示频谱相似性。为了平衡低频分量和高频分量之间的差异,在SFSD方法中将目标频谱特征的频谱作为归一化因子。接下来,在我们的验证实验中,将美国地质调查局的光谱数据和两张高光谱遥感图像用作测试数据。在频谱可分辨性和分类精度方面,将此处提出的新SFSD与领先方法进行了比较。结果表明,SFSD表现出相对较好的性能,在高光谱图像分类中具有更强大的应用。

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