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Impacts of Noise on the Accuracy of Hyperspectral Image Classification by SVM

机译:噪声对支持向量机的高光谱图像分类精度的影响

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The support vector machine (SVM) has become a popular tool for image classification recently.The performance of SVM for hyperspectral image classification has been examined from a range of perspectives,but the impacts of noise,errors and uncertainties have attracted less attention. This paper aims to evaluate the impacts of noise on SVM classification. The research is undertaken using real imagery acquired by the OMIS hyperspectrai sensor. To assess the sensitivity and reduction capacity of SVM classifier to different types of noise a simulation study is undertaken using two types of noise. The first type of noise is striping,in which some rows or columns of the image have markedly abnormal signals. The second type of noise is caused by some uncertain factors that may impact upon one band,one pixel or one line. This noise may be evaluated by introducing salt and pepper noise. A variety of datasets containing different types of noise are generated and classified using a SVM. The results of the classifications,with particular regard to their accuracy,are compared against a classification of the original dataset and comparative analyses obtained using traditional classifiers including the spectral angle mapper (SAM) and binary encoding (BE). The results indicate that the SVM is more effective to alleviate the effects of noise than SAM and BE.
机译:支持向量机(SVM)最近已成为一种流行的图像分类工具。从多个角度研究了支持向量机(SVM)在高光谱图像分类中的性能,但噪声,误差和不确定性的影响引起了人们的较少关注。本文旨在评估噪声对SVM分类的影响。该研究是使用OMIS高光谱传感器获取的真实图像进行的。为了评估SVM分类器对不同类型噪声的敏感性和降低能力,使用两种类型的噪声进行了仿真研究。第一种噪声是条纹,其中图像的某些行或列具有明显异常的信号。第二类噪声是由一些不确定因素引起的,这些因素可能影响一条带,一条像素或一条线。可以通过引入盐和胡椒粉噪声来评估此噪声。使用SVM生成并分类了包含不同类型噪声的各种数据集。将分类结果(特别是准确性)与原始数据集的分类以及使用传统分类器(包括光谱角度映射器(SAM)和二进制编码(BE))获得的比较分析进行比较。结果表明,SVM比SAM和BE更有效地减轻了噪声的影响。

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