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首页> 外文期刊>Journal of the Indian Society of Remote Sensing >Urban Greening Tree Species Classification Based on HSV Colour Space of WorldView-2
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Urban Greening Tree Species Classification Based on HSV Colour Space of WorldView-2

机译:基于WorldView-2 HSV颜色空间的城市绿化树种分类

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摘要

Feature mining and effective combination of remote sensing data can effectively improve the accuracy of tree species classification; however, the application of some common features in tree species classification needs to be further analysed. In this study, we transformed WorldView-2 RGB bands to hue, saturation and value (HSV) colour space, constructed 56 HSV features, used maximum likelihood classification (MLC) and support vector machine (SVM) to classify tree species based on these data sets and feature combinations to explore which combinations can effectively improve the recognition accuracy. The results show that among the 56 HSV features, the highest classification accuracy (64.2893%) was generated by the HSV feature transformed by the 368 band combination (CBC368). A single HSV feature set could not improve the classification accuracy compared with the spectral band used which produced the HSV. Among the feature sets of all H, all S and all V, the highest classification accuracy (71.7063%) was generated by feature sets all S; it is close but not higher than the classification results obtained using eight bands. Among the combination of two feature sets, the highest classification accuracy (77.5384%) was generated by all S + all V, and the classification accuracy is much higher than that obtained using the eight bands of WorldView-2 (74.0713%, MLC based). When all H, S and V were combined, the classification accuracy reached 77.6251%. Comparative experiments showed that combining all HSV colour spaces transformed by the eight spectral bands of WorldView-2 can effectively improve tree species recognition accuracy.
机译:特征挖掘和遥感数据的有效组合可以有效提高树种分类的准确性;然而,需要进一步分析树种分类中一些共同特征的应用。在本研究中,我们将WorldView-2 RGB频段转换为色调,饱和度和值(HSV)颜色空间,构建了56个HSV功能,使用最大似然分类(MLC)和支持向量机(SVM)来基于这些数据对树物种进行分类设置和特征组合来探索哪种组合可以有效地提高识别准确性。结果表明,在56 HSV特征中,由368频段组合(CBC368)转换的HSV功能产生了最高的分类精度(64.2893%)。与生产HSV的光谱带相比,单个HSV功能集不能提高分类准确性。在所有H的特征组中,所有S和所有V的特征集,通过特征设置所有S的最高分类准确度(71.7063%);它很接近但不高于使用八个频带获得的分类结果。在两个特征集的组合中,所有S +所有V的分类准确度(77.5384%)产生了最高的分类精度,并且分类精度远高于使用WorldView-2的八个频段获得的分类精度(74.0713%,基于MLC) 。组合所有H,S和V,分类准确度达到77.6251%。比较实验表明,通过WorldView-2的八个光谱带改变的所有HSV颜色空间可以有效地提高树种识别准确性。

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