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Using intensity edges to improve parameter estimation in blind image restoration

机译:在盲区图像复原中使用强度边缘改善参数估计

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Abstract: In blind image restoration the parameters of the imaging system are unknown, and must be estimated along with the restored image. Assuming that the images are piecewise smooth, the most part of the information needed for the estimation of the degradation parameters is expected to be located across the discontinuity and hence a better estimation of the paper we adopt a fully Bayesian approach which enables the joint MAP estimation of the image field and the ML estimations of the degradation parameters and the MRF hyperparameters. Owing to the presence of an explicit, binary line process, we exploit suitable approximations to greatly reduce the computational cost of the method. In particular, we employ a mixed-annealing algorithm for the estimation of the intensity and the line fields, periodically interrupted for updating the degradation parameters and the hyperparameters, based on the current estimate of the image field. The degradation parameters are updated by solving a least square problem of very small size. To update the hyperparameters we exploit MCMC techniques and saddle point approximations to reduce the computation of expectations to low cost time averages over binary variables only. !31
机译:摘要:在盲图像恢复中,成像系统的参数未知,必须与恢复的图像一起进行估计。假设图像是分段平滑的,则估计退化参数所需的大部分信息预计位于整个不连续处,因此,对纸张进行更好的估计时,我们采用了完全贝叶斯方法,该方法能够进行联合MAP估计图像场的特征以及退化参数和MRF超参数的ML估计。由于存在显式的二进制行处理,因此我们利用合适的近似值来大大降低该方法的计算成本。特别是,我们采用混合退火算法来估计强度和线场,并根据图像场的当前估计值定期中断更新更新降级参数和超参数。通过解决尺寸非常小的最小二乘问题来更新降级参数。为了更新超参数,我们利用MCMC技术和鞍点逼近来将期望的计算减少到仅针对二进制变量的低成本时间平均值。 !31

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