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Robust Jointly Sparse Regression for Image Feature Selection

机译:鲁棒的联合稀疏回归图像特征选择

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In this paper, we proposed a novel model called Robust Jointly Sparse Regression (RJSR) for image feature selection. In the proposed model, the L21-norm based loss function is robust to outliers and the L21-norm regularization term guarantees the joint sparsity for feature selection. In addition, the model can solve the small-class problem in the regression-based methods or the LDA-based methods. Comparing with the traditional L21-norm minimization based methods, the proposed method is more robust to noise since the flexible factor and the robust measurement are incorporated into the model to perform feature extraction and selection. An alternatively iterative algorithm is designed to compute the optimal solution. Experimental evaluation on several well-known data sets shows the merits of the proposed method on feature selection and classification, especially in the case when the face image is corrupted by block noise.
机译:在本文中,我们提出了一种称为鲁棒联合稀疏回归(RJSR)的图像特征选择模型。在提出的模型中,基于L21范数的损失函数对异常值具有鲁棒性,并且L21范数正则化项保证了特征选择的联合稀疏性。此外,该模型可以解决基于回归的方法或基于LDA的方法中的小类问题。与传统的基于L21范数最小化的方法相比,该方法对噪声更鲁棒,这是因为将柔性因子和鲁棒性测量值纳入模型中以执行特征提取和选择。设计了另一种迭代算法来计算最佳解。在几个知名数据集上的实验评估表明,该方法在特征选择和分类上的优点,特别是在人脸图像被块噪声破坏的情况下。

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