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Comparison of Land Cover Types Classification Methods Using Tiangong-2 Multispectral Image

机译:利用Tiangong-2多光谱图像的土地覆盖类型分类方法的比较

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In this paper, Qinghai Lake and Taihu Lake are used as experimental areas, and the visible and near infrared spectrum range of Tiangong-2 Wideband Imaging Spectrometer are selected for classification research. On the basis of preprocessing, the images are classified by several common classification methods such as Minimum Distance Classification (MDC), Maximum Likelihood Classification (MLC), Spectral Angle Mapping (SAM) and Support Vector Machine (SVM). The classification results are verified using confusion matrices. In the land cover types classification of Qinghai Lake area, the overall classification accuracy of SVM is the highest, which is 99.04%, followed by SAM of 98.78%, MDC of 97.84%, and MLC of 86.89%. In the land cover types classification of Taihu Lake area, the overall classification accuracy of SVM is the highest, which is 92.44%, followed by MDC of 88.90%, SAM of 84.01%, and MLC of 71.01%. After comparative analysis, the practicality and superiority of the SVM method in the image classification of visible and near infrared spectrum range of Wide-band Imaging Spectrometer are proved, which provides a technical reference and theoretical basis for the classification research of Tiangong-2 data.
机译:在本文中,青海和太湖被用作试验区,和天宫二号宽带成像光谱仪的可见光和近红外光谱范围被选择用于分类研究。上预处理的基础上,所述图像是由几种常用的分类方法,例如最小距离分类(MDC),最大似然分类(MLC),光谱角映射(SAM)和支持向量机(SVM)分类。分类结果使用混淆矩阵验证。在青海湖地区的土地覆盖类型分类,SVM的总体分类准确度是最高的,这是99.04%,其次是98.78%SAM的97.84%,MDC,和86.89%MLC。在太湖地区的土地覆盖类型分类,SVM的总体分类准确度是最高的,这是92.44%,其次是88.90%MDC的84.01%SAM,和71.01%MLC。后比较分析,实用性和在宽带成像光谱仪的可见光和近红外光谱范围中的图像分类的SVM方法的优越性被证实,它提供了天宫二号数据的分类研究技术参考和理论依据。

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