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首页> 外文期刊>Geoscience and Remote Sensing Letters, IEEE >A Support Vector Machine-Based Particle Filter Method for Improved Flooding Classification
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A Support Vector Machine-Based Particle Filter Method for Improved Flooding Classification

机译:改进的洪水分类的基于支持向量机的粒子滤波方法

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摘要

Support vector machines (SVMs) have been applied to land cover classification, and a number of studies have demonstrated their ability to increase classification accuracy. The high correlation between the data set and SVM training model parameters indicates the high performance of the classification model. To improve the correlation, research has focused on the integration of SVMs and other algorithms for data set selection and SVM training model parameter estimation. This letter proposes a novel method, based on a particle filter (PF), of estimating SVM training model parameters according to an observation system. By treating the SVM training function as the observation system of the PF, the new method automatically updates the SVM training model parameters to values that are more appropriate for the data set and can provide a better classification model than can the original model, wherein the parameters are set by trial and error. Various experiments were conducted using Radarsat-2 synthetic aperture radar data from the 2011 Thailand flood. The proposed method provides superior performance and a more accurate analysis compared with the standard SVM.
机译:支持向量机(SVM)已应用于土地覆盖分类,许多研究表明它们具有提高分类精度的能力。数据集和SVM训练模型参数之间的高度相关性表明分类模型的高性能。为了改善相关性,研究集中在支持向量机和其他算法的集成上,以进行数据集选择和支持向量机训练模型参数估计。这封信提出了一种基于粒子过滤器(PF)的新方法,根据观测系统估算SVM训练模型参数。通过将SVM训练功能作为PF的观察系统,该新方法将SVM训练模型参数自动更新为更适合数据集的值,并且可以提供比原始模型更好的分类模型,其中参数由反复试验设定。使用来自2011年泰国洪水的Radarsat-2合成孔径雷达数据进行了各种实验。与标准SVM相比,该方法提供了卓越的性能和更准确的分析。

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