Learning-based Hierarchical Clustering Regression for Efficient Unaligned Face Hallucination

Shuyun Wang, Z. Gan, Feng Liu
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Abstract

In this paper, we propose an effective single image super-resolution method for unaligned face images, in which the learning-based hierarchical clustering regression approach is used to get better reconstruction model. The proposed face hallucination method can be divided into two parts: clustering and regression. In the clustering part, a dictionary is trained on the whole face image with tiny size, and the training images are clustered based on the Euclidean distance. Thus, the facial structural prior is fully utilized and the accurate result of clustering can be obtained. In the regression part, only one global dictionary in which atoms are taken as the anchors, will be trained in the entire training phase. Therefore, the time complexity can be effectively reduced. More importantly, the learned anchors are shared with all the clusters. For each cluster, the Euclidean distance is used to search the nearest neighbors for each anchor to form the subspace. Moreover, a regression model is learned to map the relationship between low-resolution features and high-resolution samples in every subspace. The core idea of our method is to utilize the same anchors but different samples for clusters to learn the local mapping more accurately, which can reduce training time and improve reconstruction quality. Experimental results show that the proposed method outperforms some state-of-the-art methods.
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基于学习的分层聚类回归高效非对齐人脸幻觉
本文提出了一种有效的单幅非对齐人脸图像超分辨方法,该方法采用基于学习的分层聚类回归方法获得更好的重建模型。本文提出的人脸幻觉方法分为聚类和回归两部分。在聚类部分,对小尺寸的整张人脸图像进行字典训练,并基于欧氏距离对训练图像进行聚类。这样可以充分利用面部结构先验,得到准确的聚类结果。在回归部分,整个训练阶段只训练一个以原子为锚点的全局字典。因此,可以有效地降低时间复杂度。更重要的是,学习到的锚点与所有集群共享。对于每个聚类,使用欧几里得距离来搜索每个锚点的最近邻居,从而形成子空间。此外,还学习了一个回归模型来映射每个子空间中低分辨率特征和高分辨率样本之间的关系。该方法的核心思想是利用相同锚点但不同样本的聚类更准确地学习局部映射,从而减少训练时间,提高重构质量。实验结果表明,该方法优于现有的一些方法。
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