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A Trace Lasso Regularized Ll-norm Graph Cut for Highly Correlated Noisy Hyperspectral Image

机译:Trace Lasso正则化LL-Norm图形为高度相关的嘈杂高光谱图像切割

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This work proposes an adaptive trace lasso regularized Ll-norm based graph cut method for dimensionality reduction of Hyperspectral images, called as 'Trace Lasso-Ll Graph Cut' (TL-L1GC). The underlying idea of this method is to generate the optimal projection matrix by considering both the sparsity as well as the correlation of the data samples. The conventional L2-norm used in the objective function is sensitive to noise and outliers. Therefore, in this work Ll-norm is utilized as a robust alternative to L2-norm. Besides, for further improvement of the results, we use a penalty function of trace lasso with the L1GC method. It adaptively balances the L2-norm and Ll-norm simultaneously by considering the data correlation along with the sparsity. We obtain the optimal projection matrix by maximizing the ratio of between-class dispersion to within-class dispersion using Ll-norm with trace lasso as the penalty. Furthermore, an iterative procedure for this TL-L1GC method is proposed to solve the optimization function. The effectiveness of this proposed method is evaluated on two benchmark HSI datasets.
机译:这项工作提出了一种自适应跟踪套索正则基于LL-NARM基于高光谱图像的维度减少的曲线曲线切割方法,称为“跟踪套索-11图切”(TL-L1GC)。该方法的潜在思想是通过考虑稀疏性以及数据样本的相关性来生成最佳投影矩阵。目标函数中使用的传统L2标准对噪声和异常值敏感。因此,在该工作中,LL-NAR标准用作L2-NOM的稳健替代。此外,为了进一步改进结果,我们使用带有L1GC方法的跟踪套索的惩罚功能。通过考虑数据相关性以及稀疏性,它同时自适应地平衡L2-NOM和LL-NOM。通过使用LL-NARM最大限度地利用追踪套索作为惩罚,通过将级别的色散与级别分散的比例最大化获得最佳投影矩阵。此外,提出了该TL-L1GC方法的迭代过程来解决优化函数。在两个基准HSI数据集中评估了该方法的有效性。

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