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Weighted Chebyshev Distance Classification Method for Hyperspectral Imaging

机译:高光谱成像的加权Chebyshev距离分类方法

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The main objective of classification is to partition the surface materials into non-overlapping regions by using some decision rules. For supervised classification, the hyperspectral imagery (HSI) is compared with the reflectance spectra of the material containing similar spectral characteristic. As being a spectral similarity based classification method, prediction of different level of upper and lower spectral boundaries of all classes spectral signatures across spectral bands constitutes the basic principles of the Multi-Scale Vector Tunnel Algorithm (MS-VTA) classification algorithm. The vector tunnel (VT) scaling parameters obtained from means and standard deviations of the class references are used. In this study, MS-VT method is improved and a spectral similarity based technique referred to as Weighted Chebyshev Distance (WCD) method for the supervised classification of HSI is introduced. This is also shown to be equivalent to the use of the WCD in which the weights are chosen as an inverse power of the standard deviation per spectral band. The use of WCD measures in terms of the inverse power of standard deviations and optimization of power parameter constitute the most important side of the study. The algorithms are trained with the same kinds of training sets, and their performances are calculated for the power of the standard deviation. During these studies, various levels of the power parameters are evaluated based on the efficiency of the algorithms for choosing the best values of the weights.
机译:分类的主要目标是通过使用一些决策规则将表面材料分成非重叠区域。对于监督分类,将高光谱图像(HSI)与含有相似光谱特性的材料的反射光谱进行比较。作为基于光谱相似性的分类方法,跨频谱频带的所有类频谱签名的不同水平和下频谱边界的预测构成了多尺度矢量隧道算法(MS-VTA)分类算法的基本原理。使用从类引用的手段和标准偏差获得的矢量隧道(VT)缩放参数。在该研究中,提高了MS-VT方法,并引入了称为HSI的监督分类的加权Chebyshev距离(WCD)方法的基于频谱相似性的技术。这也被认为是使用WCD的使用,其中选择权重为每个光谱频带标准偏差的逆功率。在标准偏差的逆功率方面使用WCD测量和功率参数优化构成了该研究的最重要方面。该算法具有相同类型的训练集培训,并且它们的性能被计算为标准偏差的功率。在这些研究期间,基于用于选择权重的最佳值的算法的效率来评估各种电力参数。

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