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A Metrological Measurement of Texture in Hyperspectral Images Using Relocated Spectral Difference Occurrence Matrix

机译:使用重新定位的光谱差异出现矩阵对高光谱图像中的纹理进行度量测量

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A new hyperspectral texture descriptor, Relocated Spectral Difference Occurrence Matrix (rSDOM) is proposed. It assesses the distribution of spectral difference in a given neighborhood. For metrological purposes, rSDOM employs Kullback-Leibler pseudo-divergence (KLPD) for spectral difference calculation. It is generic and adapted for any spectral range and number of band. As validation, a texture classification scheme based on nearest neighbor classifier is applied on HyTexiLa dataset using rSDOM. The performance is close to Opponent Band Local Binary Pattern (OBLBP) with classification accuracy of 94.7%, but at a much-reduced feature size (0.24% of OBLBP’s) and computational complexity.
机译:提出了一种新的高光谱纹理描述符,即重定位光谱差发生矩阵(rSDOM)。它评估给定邻域中光谱差异的分布。出于计量目的,rSDOM使用Kullback-Leibler伪散度(KLPD)进行光谱差计算。它是通用的,适用于任何频谱范围和频带数量。作为验证,使用rSDOM将基于最近邻分类器的纹理分类方案应用于HyTexiLa数据集。该性能接近对手带局部二进制模式(OBLBP),分类精度为94.7%,但特征尺寸却大大减少(占OBLBP的0.24%),并且计算复杂度高。

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