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Self-Paced Joint Sparse Representation for the Classification of Hyperspectral Images

机译:自定步距联合稀疏表示用于高光谱图像分类

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In this paper, a self-paced joint sparse representation (SPJSR) model is proposed for the classification of hyperspectral images (HSIs). It replaces the least-squares (LS) loss in the standard joint sparse representation (JSR) model with a weighted LS loss and adopts a self-paced learning (SPL) strategy to learn the weights for neighboring pixels. Rather than predefining a weight vector in the existing weighted JSR methods, both the weight and sparse representation (SR) coefficient associated with neighboring pixels are optimized by an alternating iterative strategy. According to the nature of SPL, in each iteration, neighboring pixels with nonzero weights (i.e., easy pixels) are included for the joint SR of a testing pixel. With the increase of iterations, the model size (i.e., the number of selected neighboring pixels) is enlarged and more neighboring pixels from easy to complex are gradually added into the JSR learning process. After several iterations, the algorithm can be terminated to produce a desirable model that includes easy homogeneous pixels and excludes complex inhomogeneous pixels. Experimental results on two benchmark hyperspectral data sets demonstrate that our proposed SPJSR is more accurate and robust than existing JSR methods, especially in the case of heavy noise.
机译:本文提出了一种自定步距的联合稀疏表示(SPJSR)模型,用于高光谱图像(HSI)的分类。它用加权的LS损失替换了标准联合稀疏表示(JSR)模型中的最小二乘(LS)损失,并采用了自定进度学习(SPL)策略来学习相邻像素的权重。与其在现有的加权JSR方法中预定义权重向量,不如通过交替迭代策略优化与相邻像素关联的权重和稀疏表示(SR)系数。根据SPL的性质,在每个迭代中,对于测试像素的联合SR,包括具有非零权重的相邻像素(即,易像素)。随着迭代次数的增加,模型大小(即,选定的相邻像素的数量)会扩大,并且从易到复杂的更多相邻像素会逐渐添加到JSR学习过程中。在几次迭代之后,可以终止该算法以产生期望的模型,该模型包括简单的均质像素,并且排除复杂的不均质像素。在两个基准高光谱数据集上的实验结果表明,我们提出的SPJSR比现有的JSR方法更准确,更健壮,尤其是在噪声较大的情况下。

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