Face Hallucination: Theory and Practice

作者:Ce Liu, Heung-Yeung Shum, William T. Freeman

摘要

In this paper, we study face hallucination, or synthesizing a high-resolution face image from an input low-resolution image, with the help of a large collection of other high-resolution face images. Our theoretical contribution is a two-step statistical modeling approach that integrates both a global parametric model and a local nonparametric model. At the first step, we derive a global linear model to learn the relationship between the high-resolution face images and their smoothed and down-sampled lower resolution ones. At the second step, we model the residue between an original high-resolution image and the reconstructed high-resolution image after applying the learned linear model by a patch-based non-parametric Markov network to capture the high-frequency content. By integrating both global and local models, we can generate photorealistic face images. A practical contribution is a robust warping algorithm to align the low-resolution face images to obtain good hallucination results. The effectiveness of our approach is demonstrated by extensive experiments generating high-quality hallucinated face images from low-resolution input with no manual alignment.

论文关键词:example-based super resolution, face hallucination, principal component analysis, eigenface, patch-based nonparametric Markov network, face alignment, Lucas-Kanade algorithm

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论文官网地址:https://doi.org/10.1007/s11263-006-0029-5