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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing. >Fusion of Support Vector Machines for Classification of Multisensor Data
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Fusion of Support Vector Machines for Classification of Multisensor Data

机译:支持向量机融合在多传感器数据分类中的应用

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摘要

The classification of multisensor data sets, consisting of multitemporal synthetic aperture radar data and optical imagery, is addressed. The concept is based on the decision fusion of different outputs. Each data source is treated separately and classified by a support vector machine (SVM). Instead of fusing the final classification outputs (i.e., land cover classes), the original outputs of each SVM discriminant function are used in the subsequent fusion process. This fusion is performed by another SVM, which is trained on the a priori outputs. In addition, two voting schemes are applied to create the final classification results. The results are compared with well-known parametric and nonparametric classifier methods, i.e., decision trees, the maximum-likelihood classifier, and classifier ensembles. The proposed SVM-based fusion approach outperforms all other approaches and significantly improves the results of a single SVM, which is trained on the whole multisensor data set.
机译:解决了由多时相合成孔径雷达数据和光学图像组成的多传感器数据集的分类问题。该概念基于不同输出的决策融合。每个数据源都经过单独处理,并由支持向量机(SVM)进行分类。不是融合最终分类输出(即土地覆盖类别),而是在后续融合过程中使用每个SVM判别函数的原始输出。该融合由另一个SVM执行,该SVM在先验输出上训练。另外,采用两种投票方案来创建最终分类结果。将结果与众所周知的参数和非参数分类器方法进行比较,即决策树,最大似然分类器和分类器集合。所提出的基于SVM的融合方法优于所有其他方法,并显着改善了单个SVM的结果,该结果在整个多传感器数据集上进行了训练。

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