Kanemura Atsunori, Maeda Shin-ichi, Ishii Shin
Graduate School of Informatics, Kyoto University, Kyoto, Japan.
Neural Netw. 2009 Sep;22(7):1025-34. doi: 10.1016/j.neunet.2008.12.005. Epub 2009 Jan 7.
This study deals with a reconstruction-type superresolution problem and the accompanying image registration problem simultaneously. We propose a Bayesian approach in which the prior is modeled as a compound Gaussian Markov random field (MRF) and marginalization is performed over unknown variables to avoid overfitting. Our algorithm not only avoids overfitting, but also preserves discontinuity in the estimated image, unlike existing single-layer Gaussian MRF models for Bayesian superresolution. Maximum-marginal-likelihood estimation of the registration parameters is carried out using a variational EM algorithm where hidden variables are marginalized out, and the posterior distribution is variationally approximated by a factorized trial distribution. High-resolution image estimates are obtained through the process of posterior computation in the EM algorithm. Experiments show that our Bayesian approach with the two-layer compound model exhibits better performance both in quantitative measures and visual quality than the single-layer model.
本研究同时处理重建型超分辨率问题及伴随的图像配准问题。我们提出一种贝叶斯方法,其中先验被建模为复合高斯马尔可夫随机场(MRF),并对未知变量进行边缘化以避免过拟合。与现有的用于贝叶斯超分辨率的单层高斯MRF模型不同,我们的算法不仅避免了过拟合,还在估计图像中保留了不连续性。使用变分期望最大化(EM)算法对配准参数进行最大边际似然估计,其中隐藏变量被边缘化,后验分布通过分解的试验分布进行变分近似。通过EM算法中的后验计算过程获得高分辨率图像估计。实验表明,我们的具有双层复合模型的贝叶斯方法在定量指标和视觉质量方面均比单层模型表现更好。