首页> 外文会议>IFIP international conference on computer and computing technologies in agriculture;CCTA2008 >OILSEED RAPE PLANTING AREA EXTRACTION BY SUPPORT VECTOR MACHINE USING LANDSAT TM DATA
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OILSEED RAPE PLANTING AREA EXTRACTION BY SUPPORT VECTOR MACHINE USING LANDSAT TM DATA

机译:利用LANDSAT TM数据通过支持向量机提取油菜种植面积

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One parametric classify (Maximum likelihood classify, MLC for short) andtwo non-parametric classifiers (Adaptive resonance theory mappings and Support vector machines, ARTMAP and SVM for short) were presented in this study. Base on the confusion matrix and the pixels fuzzy analysis, the non-parametric classifier may be a more preferable approach than the parametric classifier for some remote sensing applications and deserves further investigation. The ARTMAP classify represent much best than the rest of classify, especially for the grade of pure pixel (90-100% pureness), Kappa coefficients and overall accuracy were nearly 100%. The higher pureness the pixels were, the better classification accuracy was got.
机译:一个参数分类(最大似然分类,简称MLC)和 本研究提出了两个非参数分类器(自适应共振理论映射和支持向量机,简称ARTMAP和SVM)。基于混淆矩阵和像素模糊分析,对于某些遥感应用,非参数分类器可能比参数分类器更可取,值得进一步研究。 ARTMAP分类代表的效果比其余分类要好得多,尤其是对于纯像素(纯度为90-100%)而言,Kappa系数和整体准确性接近100%。像素的纯度越高,分类精度越好。

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