基于蚁群算法的高光谱遥感图像特征选择

F. Samadzadegan, T. Partovi
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引用次数: 17

摘要

目前,高光谱遥感成像系统可以获取几百个光谱波段。增加光谱波段可以提供更多的土地覆盖信息,分离相似等级和分类精度可能会提高。然而,传统分类器对高光谱图像的分类存在休斯现象。即对于固定数量的训练样本,通过增加光谱波段来降低分类精度。克服上述问题的解决方案之一是基于特征选择技术的输入空间降维。传统的特征选择技术在性能和寻找全局最优特征子集选择方面存在一定的局限性。提出了一种新的基于蚁群优化的特征选择算法。蚁群控制技术是基于真实蚁群的行为。通过对AVIRIS图像数据集的分类精度评价,可以看出该算法比遗传算法等非参数优化方法实现了更少的特征和更高的分类精度,是一种有效的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature selection based on Ant Colony algorithm for hyperspectral remote sensing images
Nowadays, hyper-spectral remote sensing imaging systems are able to acquire several hundreds of spectral bands. Increasing spectral bands provide the more information for land cover and separate similarity classes and classification accuracy potentially could increase. Nevertheless classification of hyper-spectral imagery by conventional classifiers suffers from Hughes phenomenon. Namely, by increasing spectral bands, for a fixed number of training samples, classification accuracy is reduced. One of the solutions for overcoming the mentioned problem is reducing the dimension of input space based on feature selection techniques. Traditional feature selection techniques have several limitations in performance and finding the global optimum subset selection of feature in hyper-spectral images. In this paper a novel feature selection algorithms based on an Ant Colony Optimization (ACO) presents. ACO techniques are based on the behavior of real ant colonies. Evaluating of obtained results from classification accuracy of AVIRIS image data set shows effectiveness of this algorithm as it achieves fewer features and higher classification accuracy rather than other non-parametric optimization methods such as Genetic Algorithm.
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