一种基于空间信息和Adaboost概念的高光谱图像分类方法

Bor-Chen Kuo, Shih-Syun Lin, Huey-Min Wu, Chun-Hsiang Chuang
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引用次数: 1

摘要

本文提出了一种基于空间信息和Adaboost概念的高光谱图像分类处理方法。这种分类过程被称为空间信息自适应特征提取(AdaFESI)。其主要思想是自适应的,即后续的特征空间被调整,以有利于那些在前一个特征空间中被光谱或空间分类器错误分类的实例。将所有的训练样本投影到这些特征空间中,训练各种分类器,从而构成一个多分类器系统。基于两个高光谱数据集的实验结果表明,该算法可以产生较好的分类结果。
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A novel classification processing based on the spatial information and the concept of Adaboost for hyperspectral image classification
In this paper, a novel classification processing based on the spatial information and the concept of Adaboost for hyperspectral image classification is proposed. This classification process is named as adaptive feature extraction with spatial information (AdaFESI). The main idea is adaptive in the sense that subsequent feature spaces are tweaked in favor of those instances misclassified by spectral or spatial classifiers in the previous feature space. All training samples are projected into these feature spaces to train various classifiers and then constitute a multiple classifier system. The experimental results based on two hyperspectral data sets show that the proposed algorithm can generate better classification results.
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