Dataset feature reduction using independent component analysis with contrast function of particle swarm optimization on hyperspectral image classification

Murinto, A. Harjoko
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引用次数: 4

Abstract

Data dimensionality reduction is an important step in the preliminary image classification. Information quantity and resolution of hyperspectral images provide a chance to solve the problem better than multispectral images. In hyperspectral image classification, higher dimensionality of data could improve the capability of class detection as well as distinguish different classes with better accuracy. The method calculation of ICA is a transforming a random vector into another space which consists of independent components. Because marginal distribution is usually unknown, the possible solution is to reduce data dimension into an optimized contrast function to measure component independency. In this research, PSO algorithm is used to solve the optimization problem. PSO is used to distinguish the signal selected by two different contrast functions. The problem existed in gradient method is solved using PSO, that is getting trapped in local optimum. The result of feature reduction done by using ICA-PSO technique is then compared with the result of feature reduction done by using ICA algorithm and PCA. Furthermore, the result gained by using ICA-PSO is used to classify hyperspectral images. In this work, Support Vector Machine is used as classifier. Classification result obtained by using ICA-PSO dimensionality reduction on AVIRIS, the value of average accuracy (AA) is 0.8535, overall accuracy (OA) is 0.8310, and K is 0.785. Whereas on HYDICE, classification result obtained by using ICA-PSO dimensionality reduction is at 0.8783 for AA, 0.8625 for OA, K is 0.850.
基于粒子群对比函数的独立分量分析数据集特征约简在高光谱图像分类中的应用
数据降维是图像初步分类的重要步骤。高光谱图像的信息量和分辨率提供了比多光谱图像更好地解决这一问题的机会。在高光谱图像分类中,更高的数据维数可以提高分类检测的能力,从而更好地区分不同的类别。ICA的计算方法是将一个随机向量变换到另一个由独立分量组成的空间中。由于边缘分布通常是未知的,因此可能的解决方案是将数据降维为优化的对比函数来度量组件的独立性。在本研究中,采用粒子群算法来解决优化问题。粒子群算法用于区分由两个不同的对比函数选择的信号。利用粒子群算法解决了梯度法存在的陷入局部最优的问题。然后将ICA- pso算法的特征约简结果与ICA算法和PCA的特征约简结果进行比较。最后,利用ICA-PSO算法对高光谱图像进行分类。在这项工作中,使用支持向量机作为分类器。采用ICA-PSO降维方法对AVIRIS进行分类,得到的分类结果平均准确率(AA)为0.8535,总体准确率(OA)为0.8310,K为0.785。而在HYDICE上,ICA-PSO降维对AA的分类结果为0.8783,对OA的分类结果为0.8625,K为0.850。
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