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Experimental study on multi sub-classifier for land cover classification-A case study in Shangri-La, China

机译:土地覆盖分类多亚分类器的实验研究 - 中国香格里拉举办的案例研究

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High accuracy remote sensed image classification technology is a long-term and continuous pursuit goal of remote sensing applications. In order to evaluate single classification algorithm accuracy, take Landsat TM image as data source, Northwest Yunnan as study area, seven types of land cover classification like Maximum Likelihood Classification has been tested, the results show that: (1)the overall classification accuracy of Maximum Likelihood Classification(MLC), Artificial Neural Network Classification(ANN), Minimum Distance Classification(MinDC) is higher, which is 82.81% and 82.26% and 66.41% respectively; the overall classification accuracy of Parallel Hexahedron Classification(Para), Spectral Information Divergence Classification(SID), Spectral Angle Classification(SAM) is low, which is 37.29%, 38.37,53.73%, respectively. (2) from each category classification accuracy: although the overall accuracy of the Para is the lowest, it is much higher on grasslands, wetlands, forests, airport land, which is 89.59%, 94.14%, and 89.04%, respectively; the SAM, SID are good at forests classification with higher overall classification accuracy, which is 89.8% and 87.98%, respectively. Although the overall classification accuracy of ANN is very high, the classification accuracy of road, rural residential land and airport land is very low, which is 10.59%, 11% and 11.59% respectively. Other classification methods have their advantages and disadvantages. These results show that, under the same conditions, the same images with different classification methods to classify, there will be a classifier to some features has higher classification accuracy, a classifier to other objects has high classification accuracy, and therefore, we may select multi sub-classifier integration to improve the classification accuracy.
机译:高精度遥感图像分类技术是遥感应用的长期和持续的追求目标。为了评估单分类算法精度,将Landsat TM图像作为数据源,西北云南作为研究区,七种类型的土地覆盖分类如最大似然分类已经过测试,结果表明:(1)整体分类准确性最大似然分类(MLC),人工神经网络分类(ANN),最小距离分类(MINDC)更高,分别为82.81%和82.26%和66.41%;平行六面体分类(段),光谱信息分类(SID),光谱角度分类(SAM)的整体分类精度分别为37.29%,38.37,53.73%。 (2)从每个类别分类准确率:虽然帕拉的整体准确性最低,但草地,湿地,森林,机场土地的总体准确性要高得多,即分别为89.59%,94.14%和89.04%; SAM,SID擅长森林分类,具有较高的整体分类准确性,分别为89.8%和87.98%。虽然安康的整体分类准确性很高,但公路的分类准确性,农村住宅用地和机场土地的分类准确性很低,分别为10.59%,11%和11.59%。其他分类方法具有它们的优缺点。这些结果表明,在相同的条件下,具有不同分类方法的相同图像分类,将有一个分类器到某些功能具有更高的分类准确性,对其他对象的分类器具有高分类准确性,因此,我们可以选择多个子分类器集成以提高分类准确性。

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