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首页> 外文期刊>Signal Processing Letters, IEEE >A Unified Regularization Framework for Virtual Frontal Face Image Synthesis
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A Unified Regularization Framework for Virtual Frontal Face Image Synthesis

机译:虚拟正面人脸图像合成的统一正则化框架

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Taking advantage of the statistical learning-based point of view, several approaches of frontal face image synthesis have received remarkable achievement. However, the existing methods mainly utilize either ordinary least squares (OLS) or fixed –norm penalized sparse regression to estimate the solution. For the former, the solution is unstable when the linear equations system is ill-conditioned. For the latter, sparsity is only considered, while the significance of local similarity between input image and each training sample is ignored. Thus the synthesized result fails to faithfully approximate the ground truth. Moreover, these traditional methods cannot ensure the consistency between corresponding patches in frontal and profile faces. To address these problems, we present a unified regularization framework (URF) by imposing two regularization terms onto the solution. Firstly, we introduce an -norm constraint and impose a diagonal weights matrix onto it, in which each diagonal entry is defined by the spatial distance between input image patch and individual patch in training set. Secondly, to mitigate the aforementioned inconsistency problem, we present a neighborhood consistency regularization term, motivated by manifold learning. Finally, we generalize our framework to the -norm penalized case. By adjusting the shrinkage parameter , the framework gets more flexibility to choose a reasonable sparse domain. Extensive experiments on CMU Multi-PIE database and CAS-PEAL-R1 database verify the efficacy of our method.
机译:利用基于统计学习的观点,正面人脸图像合成的几种方法都取得了令人瞩目的成就。但是,现有方法主要利用普通最小二乘(OLS)或固定范数惩罚性稀疏回归来估计解决方案。对于前者,当线性方程组病态时,解不稳定。对于后者,仅考虑稀疏性,而忽略输入图像和每个训练样本之间局部相似性的重要性。因此,综合结果无法忠实地近似地面真理。而且,这些传统方法不能确保正面和侧面的相应补丁之间的一致性。为了解决这些问题,我们通过在解决方案上强加两个正则化术语来提供一个统一的正则化框架(URF)。首先,我们引入-norm约束,并在其上施加对角线权重矩阵,其中每个对角线项由输入图像块与训练集中各个块之间的空间距离定义。其次,为了减轻上述不一致问题,我们提出了一种由多元学习驱动的邻域一致性正则化术语。最后,我们将框架归纳为-norm惩罚案例。通过调整收缩参数,框架可以获得更大的灵活性来选择合理的稀疏域。在CMU Multi-PIE数据库和CAS-PEAL-R1数据库上进行的大量实验证明了我们方法的有效性。

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