基于粒子群优化的加权多数投票的杂质函数带优先级高维数据集特征提取

Yang-Lang Chang, Min-Yu Huang, Ping-Hao Wang, Tung-Ju Hsieh, Jyh-Perng Fang, Bormin Huang
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引用次数: 2

摘要

近年来,随着遥感技术的进步,遥感数据量急剧增加。高光谱遥感影像的特征提取可以减少此类高维数据集,解决大数据问题,避免休斯现象,提高分类性能。基于此,本文提出了一种基于并行粒子群优化(PPSO)的波段选择和加权投票杂质函数(WVIF)的波段优先排序两种方法的高光谱图像特征提取框架。利用PPSO波段选择算法,先将高相关波段分成若干模块,对高维数据集进行粗约,然后利用WVIF波段优先排序法,对这些高相关波段模块进行波段与类间的统计关系分析,从数据集中精挑细选出最重要的特征波段。此外,本文还采用了基于NVIDIA计算统一设备架构(CUDA)技术的现代图形处理单元(GPU)架构的PPSO算法。将高相关波段模块分组,可以提高PPSO波段选择的计算速度。利用MASTER和AVIRIS高光谱图像对PPSO/WVIF框架的有效性进行了评价。实验结果表明,该方法不仅可以降低数据集的维数,而且可以提供满意的分类性能和计算速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Particle Swarm Optimization-Based Impurity Function Band Prioritization Using Weighted Majority Voting for Feature Extraction of High Dimensional Data Sets
In recent years, with the improvement of sensor technologies, the volumes of remote sensing data are increased dramatically. The feature extraction of hyper spectral remotely sensed images can reduce such high-dimensional datasets, solve the big data problem, avoid the Hughes phenomena and improve the classification performance. Accordingly, this paper presents a framework for feature extraction of hyper spectral imagery, which consists of two approaches, referred to as parallel particle swarm optimization (PPSO) band selection and weighted voting impurity function (WVIF) band prioritization. The highly correlated bands of hyper spectral imagery can be grouped first into the some modules by PPSO band selection algorithm to coarsely reduce high-dimensional datasets, and these highly correlated band modules can then be analyzed with the statistical relationship between bands and classes by WVIF band prioritization method to finely select the most important feature bands form the datasets. Furthermore, a PPSO algorithm based on modern graphics processing unit (GPU) architecture using NVIDIA compute unified device architecture (CUDA) technology is using in this paper. It can improve the computational speed of PPSO band selection to group the high correlated band modules. The effectiveness of the proposed PPSO/WVIF framework is evaluated by MASTER and AVIRIS hyper spectral images. The experimental results demonstrated that the proposed method not only could reduction the dimension of datasets, but also can offer a satisfactory classification performance and computational speed.
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