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Tuning Sparsity for Face Hallucination Representation

机译:调整面部幻觉表示的稀疏度

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Due to the under-sparsity or over-sparsiry, the widely used regu-larization methods, such as ridge regression and sparse representation, lead to poor hallucination performance in the presence of noise. In addition, the regularized penalty function fails to consider the locality constraint within the observed image and training images, thus reducing the accuracy and stability of optimal solution. This paper proposes a locally weighted sparse regularization method by incorporating distance-inducing weights into the penalty function. This method accounts for heteroskedasticity of representation coefficients and can be theoretically justified from Bayesian inference perspective. Further, in terms of the reduced sparseness of noisy images, a moderately sparse regularization method with a mixture of l_1 and l_2 norms is introduced to deal with noise robust face hallucination. Various experimental results on public face database validate the effectiveness of proposed method.
机译:由于稀疏性或稀疏性,广泛使用的常规化方法(例如岭回归和稀疏表示)导致在存在噪声的情况下产生较差的幻觉性能。另外,正则惩罚函数不能考虑观察图像和训练图像内的局部性约束,从而降低了最优解的准确性和稳定性。本文提出了一种将距离感应权重纳入惩罚函数的局部加权稀疏正则化方法。这种方法考虑了表示系数的异方差性,并且可以从贝叶斯推理的角度理论上证明其合理性。此外,考虑到降低了噪声图像的稀疏性,引入了具有l_1和l_2范数混合的中度稀疏正则化方法来处理噪声鲁棒的人脸幻觉。在公众面部数据库上的各种实验结果证明了该方法的有效性。

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