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Ensemble Learning for Hyperspectral Image Classification Using Tangent Collaborative Representation

机译:使用切线协作表示进行高光谱图像分类的集合学习

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摘要

Recently, collaborative representation classification (CRC) has attracted much attention for hyperspectral image analysis. In particular, tangent space CRC (TCRC) has achieved excellent performance for hyperspectral image classification in a simplified tangent space. In this article, novel Bagging-based TCRC (TCRC-bagging) and Boosting-based TCRC (TCRC-boosting) methods are proposed. The main idea of TCRC-bagging is to generate diverse TCRC classification results using the bootstrap sample method, which can enhance the accuracy and diversity of a single classifier simultaneously. For TCRC-boosting, it can provide the most informative training samples by changing their distributions dynamically for each base TCRC learner. The effectiveness of the proposed methods is validated using three real hyperspectral data sets. The experimental results show that both TCRC-bagging and TCRC-boosting outperform their single classifier counterpart. In particular, the TCRC-boosting provides superior performance compared with the TCRC-bagging.
机译:最近,协作代表分类(CRC)吸引了对高光谱图像分析的许多关注。特别地,切线空间CRC(TCRC)在简化的切线空间中实现了对高光谱图像分类的优异性能。在本文中,提出了新的基于袋装的TCRC(TCRC袋)和基于促进的TCRC(TCRC助推)方法。 TCRC-Bagging的主要思想是使用自举样品方法产生多样化的TCRC分类结果,可以同时增强单个分类器的精度和多样性。对于TCRC-Boosting,它可以通过为每个基础TCRC学习者动态改变其分布来提供最具信息丰富的培训样本。使用三个实际高光谱数据集进行验证所提出的方法的有效性。实验结果表明,TCRC袋和TCRC助推器均优于其单一分类器对应物。特别是,与TCRC袋装相比,TCRC升压提供了卓越的性能。

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