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Three-dimensional Gabor feature extraction for hyperspectral imagery classification using a memetic framework

机译:使用模因框架的三维Gabor特征提取用于高光谱图像分类

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Feature extraction based on three-dimensional (3D) wavelet transform is capable of improving the classification accuracy of hyperspectral imagery data by simultaneously capturing the geometrical and statistical spectral spatial structure of the data. Nevertheless, the design of wavelets is always proceeded with empirical parameters, which tends to involve a large number of irrelevant and redundant spectral spatial features and results in suboptimal configuration. This paper proposes a 3D Gabor wavelet feature extraction in a memetic framework, named M3DGFE, for hyperspectral imagery classification. Particularly, the parameter setting of 3D Gabor wavelet feature extraction is optimized using memetic algorithm so that discriminative and parsimonious feature set is acquired for accurate classification. M3DGFE is characterized by an efficient fitness evaluation function and a pruning local search. In the fitness evaluation function, a new concept of redundancy-free relevance based on conditional mutual information is proposed to measure the goodness of the extracted candidate features. The pruning local search is specially designed to eliminate both irrelevant and redundant features without sacrificing the discriminability of the obtained feature subset. M3DGFE is tested on both pixel-level and image-level classification using real-world hyperspectral remote sensing data and hyperspectral face data, respectively. The experimental results show that M3DGFE achieves promising classification accuracy with parsimonious feature subset. (C) 2014 Elsevier Inc. All rights reserved.
机译:通过同时捕获数据的几何和统计光谱空间结构,基于三维(3D)小波变换的特征提取能够提高高光谱图像数据的分类精度。尽管如此,小波的设计总是以经验参数进行的,这往往会涉及大量不相关和多余的光谱空间特征,并导致次优配置。本文提出了一种在名为M3DGFE的模因框架中的3D Gabor小波特征提取,用于高光谱图像分类。尤其是,使用模因算法优化了3D Gabor小波特征提取的参数设置,从而获得了具有区别性和简约性的特征集以进行准确分类。 M3DGFE的特点是高效的适应性评估功能和修剪本地搜索的功能。在适应性评估功能中,提出了一种基于条件互信息的无冗余相关性的新概念,以衡量所提取候选特征的优劣。修剪局部搜索经过专门设计,可在不牺牲所获得特征子集的可分辨性的情况下消除不相关和冗余的特征。分别使用现实世界的高光谱遥感数据和高光谱人脸数据对M3DGFE进行了像素级和图像级分类测试。实验结果表明,M3DGFE具有精简的特征子集,具有很好的分类精度。 (C)2014 Elsevier Inc.保留所有权利。

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