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The analysis about factors influencing the supervised classification accuracy for vegetation hyperspectral remote sensing imagery

机译:植被高光谱遥感影像监督分类精度影响因素分析

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Classification of hyperspectral imagery has drawn much attention in recent years since the development of hyperspectral sensor. The hyperspectral sensor may offer hundreds of contiguous and very narrow spectral channels which may detect more detailed classes and improve the classification accuracy. However, with the increasing dimensionalities of classification data space, the parameters in the supervised classification models are also increasing quickly, which will need much more numbers of training samples to ensure the parameters estimation accuracy. Most recent researches focus on developing novel classification algorithms to improve the hyperspectral imagery processing performance. There are still lack of systematic researches about the factors (such as numbers and distributions of training samples, classification algorithms, dimensionalities of feature space) influencing classification accuracy for vegetation hyperspectral imagery so far. To analyze the factors, firstly, two methods for dimensionality reduction are proposed based on correlation coefficient and spectrum curve inflection points; On this basis, we use region of interest (ROI) constructed by different training numbers of pixels and different distributions to classify OMIS aerial hyperspectral image of ZaoYuan Town of Yanan City by several often used supervised classification algorithms; then analyze the relationships among classifiers and training samples and feature space dimensionality. This research shows that the classifiers based on Mahal distance and Maximum Likelihood (ML) that use secondary moment are superior to Euclid distance (ED), parallelepiped (PP) and spectral angle mapper (SAM); when the numbers of training samples are large enough, dimensionality reduction makes little influence on classification accuracy; when the numbers of training samples are limited, the influence is distinct on Mahal distance and ML but not distinct on Euclidean distance, PP and SAM.
机译:自从高光谱传感器的发展以来,高光谱图像的分类近年来引起了很多关注。高光谱传感器可以提供数百个连续且非常窄的光谱通道,这些通道可以检测更详细的类别并提高分类精度。但是,随着分类数据空间维数的增加,监督分类模型中的参数也在快速增加,这需要大量的训练样本才能保证参数估计的准确性。最近的研究集中在开发新颖的分类算法以提高高光谱图像处理性能。迄今为止,关于植被高光谱图像分类精度的影响因素(如训练样本的数量和分布,分类算法,特征空间的维数)仍缺乏系统的研究。为了分析这些因素,首先,基于相关系数和谱曲线拐点,提出了两种降维方法。在此基础上,我们采用几种训练有素的分类算法,对由不同像素数训练和不同分布构成的感兴趣区域(ROI),对延安市枣园镇的OMIS航空高光谱图像进行分类。然后分析分类器与训练样本之间的关系以及特征空间维数。研究表明,基于次要矩的基于马氏距离和最大似然(ML)的分类器优于欧几里得距离(ED),平行六面体(PP)和谱角映射器(SAM);当训练样本数量足够多时,降维对分类精度的影响很小。当训练样本数量有限时,对马氏距离和ML的影响不明显,而对欧氏距离,PP和SAM的影响不明显。

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