首页> 外文会议>Conference on Remote Sensing and GIS Data Processing and Applications; and Innovative Multispectral Technology and Applications; 20071115-17; Wuhan(CN) >Feature selection of spectral dimension by hyperspectral remote sensing images based on genetic algorithm and support vector machine
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Feature selection of spectral dimension by hyperspectral remote sensing images based on genetic algorithm and support vector machine

机译:基于遗传算法和支持向量机的高光谱遥感影像光谱尺度特征选择

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An algorithm is presented for deriving an optimal features classified with a support vector machine. The approach is based on direct objective optimization which is approximated by the selection of appropriate features as the SVM learning predictor in a regularized learning framework. To process the regularized learning, a genetic method provides a learning rule for in an outer loop of an iteration, while at each iteration training predictor model using gradient descent is to gradually added the feature into improving the existing model. The inner loop is heuristic to perform support vector machine training and provide support vector coefficients on which the gradient descent depends. The experiment was conduced on the Airborne Visible/Infrared Imaging Spectrometer(AVIRIS) data for classification. The result shows that the feature selection of spectral dimension and support vector machine are jointly optimized.
机译:提出了一种算法,用于推导用支持向量机分类的最佳特征。该方法基于直接目标优化,可以通过选择适当的特征作为常规学习框架中的SVM学习预测因子来近似。为了处理正则化学习,遗传方法为迭代的外循环提供了学习规则,而在每次迭代中,使用梯度下降的训练预测器模型将逐渐将特征添加到改进现有模型中。内循环启发式执行支持向量机训练,并提供梯度下降所依赖的支持向量系数。该实验是基于机载可见/红外成像光谱仪(AVIRIS)数据进行分类的。结果表明,谱维特征和支持向量机的特征选择是共同优化的。

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