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首页> 外文期刊>Fresenius environmental bulletin >ANALYSIS OF THE PERFORMANCE OFTEXTURE FEATURES IN TREE SPECIES CLASSIFICATION OCCURRENCE-BASED EXTRACTION APPROACH
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ANALYSIS OF THE PERFORMANCE OFTEXTURE FEATURES IN TREE SPECIES CLASSIFICATION OCCURRENCE-BASED EXTRACTION APPROACH

机译:基于树种分类发生的提取方法的曲线特征性能分析

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The texture feature of images plays an im-portant role in tree species classification. The selec-tion of important texture features in tree species identification can be supported via performance test-ing by considering the same texture features pro-duced by different bands and different texture fea-tures produced by the same band in tree species clas-sification.In this study. we used the 8-band WorldView-2 image as the data source and extracted three types of texture features,i.e., data range, mean, and variance, by applying occurrence measures to the obtained data, then used the maximum likelihood classifier for image classification. The results show that the classification accuracies of the texture fea-tures extracted from the red edge, near-infrared l, near-infrared 2 bands(55.0768%,53.7395%.and 51.1020%, respectively) were higher than those of other bands(ranging from 39.5740% to 43.9079%);the texture feature classification accuracy of the mean(77.9470%) was higher than those of the data range(45.3938%)and variance(45.3938%);when the eight bands combined with all mean and all data range, the classification accuracy of tree species reached 89.7845%.The results demonstrate that the effective combination of spectral bands and im-portant texture features can improve the tree species classification results.
机译:图像的纹理特征在树种分类中播放了一个IM-portant作用。可以通过考虑由不同频带和树种在树种CLAS-yification中的相同频段产生的不同纹理FEA-TURE来支持的相同纹理特征来支持树种识别中重要纹理特征的选择。在这项研究中。我们使用8波段WorldView-2图像作为数据源,并提取了三种类型的纹理特征,即数据范围,平均值和方差,通过将出现措施应用于所获得的数据,然后使用用于图像分类的最大似然分类器。结果表明,从红色边缘,近红外L,近红外2条带近红外线的纹理FEA的分类精度(55.0768%,53.7395%。和51.1020%分别)高于其他乐队(范围从39.5740%到43.9079%);纹理特征分类的平均值(77.9470%)高于数据范围(45.3938%)和方差(45.3938%);当八个频段结合所有均值和所有数据范围,树种的分类精度达到89.7845%。结果表明,光谱带和IM-纹理特征的有效组合可以改善树种分类结果。

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