...
首页> 外文期刊>International Journal of Mining and Geo-Engineering >Integration of support vector machines for hydrothermal alteration mapping using ASTER data – case study the northwestern part of the Kerman Cenozoic Magmatic Arc, Iran
【24h】

Integration of support vector machines for hydrothermal alteration mapping using ASTER data – case study the northwestern part of the Kerman Cenozoic Magmatic Arc, Iran

机译:使用ASTER数据的水热改变映射的支持向量机的集成 - 案例研究克尔曼新生代岩石弧的西北部,伊朗

获取原文
           

摘要

This work applies support vector machine (SVM) algorithms in two versions of singular and general SVM classifiers to map hydrothermal alteration zones in the northwestern part of the Kerman Cenozoic Magmatic Arc (KCMA). Three visible bands and six SWIR bands of ASTER images were applied as inputs for SVM classifiers. The develosped algorithms were able to classify ASTER images into hydrothermal alteration or non-hydrothermal alteration classes. In singular SVM, nine classifiers were able to vote individually for every pixel in the image. Then, they were combined through integration rules to present a final decision about every pixel. The general SVM classifier integrated nine ASTER bands at the signal level to produce the final decision. The classification error rate showed that the general Gaussian RBF kernel-based SVM classifier had higher accuracy for the classification of hydrothermal alteration zones. The SVM results were then compared with other classified images based on band ratio and SAM methods. The main problem associated with these methods was that vegetation covering was highlighted as alteration zones while the SVM algorithm could solve this issue. Also, the verification of results, based on field and laboratory investigations, showed the SVM method to produce a more accurate map of alteration than that obtained from the band ratio and SAM.
机译:这项工作适用于两个版本的单数和一般SVM分类器中的支持向量机(SVM)算法,以映射克尔曼新生代岩层弧(KCMA)的西北部的水热改变区。将三个可见频段和六个ASTER图像的频带应用于SVM分类器的输入。 DeveloSpeed算法能够将Aster图像分类为水热改变或非热热改变类别。在奇异的SVM中,九分类器能够针对图像中的每个像素单独投票。然后,它们通过集成规则组合来呈现关于每个像素的最终决定。一般SVM分类器集成了信号电平的九个Aster频段以产生最终决定。分类误差率显示,基于Gaussian RBF内核的SVM分类器具有更高的水热改变区分类的准确性。然后将SVM结果与基于带比和SAM方法的其他分类图像进行比较。与这些方法相关的主要问题是,植被覆盖被突出显示为改变区域,而SVM算法可以解决这个问题。此外,基于现场和实验室研究的结果验证,SVM方法显示比从带比和SAM获得的更准确的改变图。

著录项

相似文献

  • 外文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号