Remote Sensing Image Classification Based on Hybrid Entropy and L1 Norm

Junyi Li, Jian-hua Li
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引用次数: 1

Abstract

Aiming at properties of remote sensing image data such as high-dimension, nonlinearity and massive unlabeled samples, a kind of probability least squares support vector machine (PLSSVM) classification method based on hybrid entropy and L1 norm was proposed. Firstly, hybrid entropy was designed by combining quasi-entropy with entropy difference, which was used to select the most "valuable" samples to be labeled from massive unlabeled sample set. Secondly, a L1 norm distance measuring was used to further select and remove outliers and redundant data from the sample set to be labeled. Finally, based on originally labeled samples and screened samples, PLSSVM was gained through training. Experimental results on classification of ROSIS hyper spectral remote sensing images show that the overall accuracy and Kappa coefficient of the proposed classification method reach 89.90% and 0.8685 respectively. The proposed method can obtain higher classification accuracy with few training samples, which is much applicable to classification problem of remote sensing images.
基于混合熵和L1范数的遥感图像分类
针对遥感影像数据高维、非线性和大量未标记样本等特点,提出了一种基于混合熵和L1范数的概率最小二乘支持向量机(PLSSVM)分类方法。首先,结合准熵和熵差设计混合熵,从大量未标记的样本集中选择最具“价值”的样本进行标记;其次,使用L1范数距离测量进一步从待标记的样本集中选择和去除异常值和冗余数据。最后,基于原始标记样本和筛选样本,通过训练得到PLSSVM。对ROSIS高光谱遥感影像的分类实验结果表明,该分类方法的总体精度和Kappa系数分别达到89.90%和0.8685。该方法可以在训练样本较少的情况下获得较高的分类精度,非常适用于遥感图像的分类问题。
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