Hyperspectral image classification with sparse representation classifier and active learning

L. Huo, Lijun Zhao, Ping Tang
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引用次数: 3

Abstract

Sparse representation classifiers have been widely studied for hyperspectral image classification. The success of sparse representation classifiers depends highly on the training dictionary. However, the definition of training samples, often in the form of field investigations, is time consuming and costly. To mitigate the problem, active learning tries to iteratively define the most informative training samples based on the outputs of the classifiers, thus reducing the quantities of samples to be labeled. For different classification models, several different active learning strategies have been proposed. In this paper, we studied one active learning strategy for sparse representation classifiers. The main idea of the proposed algorithm is to select the samples with most similar reconstruction errors for two different classes. The experiments are performed on two public hyperspectral data. The results show the effectiveness of the proposed algorithm.
基于稀疏表示分类器和主动学习的高光谱图像分类
稀疏表示分类器在高光谱图像分类中得到了广泛的研究。稀疏表示分类器的成功与否在很大程度上取决于训练字典。然而,训练样本的定义通常以实地调查的形式进行,既耗时又昂贵。为了缓解这个问题,主动学习尝试根据分类器的输出迭代地定义最具信息量的训练样本,从而减少需要标记的样本数量。针对不同的分类模型,提出了几种不同的主动学习策略。本文研究了一种稀疏表示分类器的主动学习策略。该算法的主要思想是选取两个不同类别重构误差最相似的样本。实验在两个公开的高光谱数据上进行。实验结果表明了该算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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