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A Nonlinear Multiple Feature Learning Classifier for Hyperspectral Images With Limited Training Samples

机译:有限训练样本的高光谱图像非线性多特征学习分类器

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摘要

A nonlinear joint collaborative representation (CR) model with adaptive weighted multiple feature learning to deal with the small sample set problem in hyperspectral image (HSI) classification is proposed. The proposed algorithm first maps every meaningful feature of the image scene into a kernel space by a column-generation (CG)-based technique. A unified multitask learning-based joint CR framework, with adaptive weighting for each feature, is then undertaken by the use of an alternating optimization algorithm, to obtain accurate kernel representation coefficients, which leads to desirable classification results. The experimental results indicate that the proposed algorithm obtains a competitive performance and outperforms the other state-of-the-art regression-based classifiers and the classical support vector machine classifier.
机译:提出了一种自适应加权多特征学习的非线性联合协作表示(CR)模型,以解决高光谱图像(HSI)分类中的小样本集问题。所提出的算法首先通过基于列生成(CG)的技术将图像场景的每个有意义的特征映射到内核空间。然后,通过使用交替优化算法,采用基于多任务学习的统一联合CR框架,并对每个特征进行自适应加权,以获得准确的内核表示系数,从而获得理想的分类结果。实验结果表明,该算法具有较好的性能,优于其他基于回归的分类器和经典的支持向量机分类器。

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