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Feature Extraction and Selection Based on Automatic Subspace Partition and Genetic Algorithm for Hyperspectral Images

机译:基于自动子空间分区和超光谱图像遗传算法的特征提取与选择

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Classification and pattern recognition of high dimensional remote sensing data are distinctly different from traditional multi-channel remote sensing classification techniques. In this paper, a newly integrated feature extraction and selection algorithm based on Automatic Subspace Partition (ASP) and Genetic Algorithm (GA) is proposed for high dimensional data reduction and classification. This method involves two steps: subspace partition of whole data space, feature extraction and features election based on Genetic Algorithm in subspace. Hyperspectral data bands are firstly partitioned different subspaces base on neighboring correlation of bands and extracted spectral feature of different subspace. Followed by the decomposition phase is optimal feature subset selection, in which the optimal feature subset acquired the best divergence is obtained according to interclass/infraclass distance of the training samples. A Genetic Algorithm implements this procedure, with each possible feature subset encoded as chromosome. Fitness scores in GA are calculated and evaluated based on Jeffries- Maturity distance of the selected training samples. In order to testify the effectiveness of the proposed method, classification experiments of hyperspectral images are conducted on Hyperion data. The experiment investigation shows that the classification result in our new method is improved compared with segmented principal component transformation (SPCT).
机译:高维遥感数据的分类和模式识别与传统的多通道遥感分类技术明显不同。本文提出了一种新的基于自动子空间分区(ASP)和遗传算法(GA)的新集成特征提取和选择算法,用于高维数据减少和分类。该方法涉及两个步骤:基于子空间中遗传算法的整个数据空间的子空间分区,特征提取和特征选举。高光谱数据频带首先划分关于频带的相邻相关性的不同子空间,并提取不同子空间的光谱特征。其次是分解阶段是最佳特征子集选择,其中根据训练样本的intercass / Infraclass距离获得最佳发散的最佳特征子集。遗传算法实现了该过程,每个可能的特征子集被编码为染色体。基于所选培训样本的Jeffries-Aergury距离计算和评估Ga的健身评分。为了验证所提出的方法的有效性,在Hyperion数据上进行高光谱图像的分类实验。实验调查表明,与分段主成分转换(SPCT)相比,我们新方法的分类结果得到改善。

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