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Bayesian framework for reconstructing missing data in color image sequences

机译:贝叶斯框架用于重建彩色图像序列中的缺失数据

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Abstract: This paper presents a Bayesian framework for reconstructing missing regions of a color image sequence. Because the three color channels are not independent a multichannel median image model is chosen. Since the model extends through time to previous and following frames it incorporates motion estimation to compensate for the effects of motion in the original scene. The paper discusses methods for detecting the missing data which exploit the temporally uncorrelated nature of typical degradation. A Markov chain Monte Carlo Gibb's Sampling scheme is adopted for drawing samples for the missing data. The method draws these from the full posterior distributions for the missing data in each of the YUV color channels. The nature of the model means that the multivariate probability distributions for the missing data are difficult to sample from. The paper shows how this can be overcome with a numerical approach to the sampling. The efficiency of this approach relies on the fact that there are only a small and finite number of values that the data can take. !20
机译:摘要:本文提出了一种用于重建彩色图像序列缺失区域的贝叶斯框架。由于三个颜色通道不是独立的,因此选择了多通道中值图像模型。由于模型通过时间扩展到前一帧和后一帧,因此它合并了运动估计以补偿原始场景中运动的影响。本文讨论了利用典型降级的时间上不相关的性质来检测丢失数据的方法。采用马尔可夫链蒙特卡洛·吉布的采样方案为丢失的数据绘制样本。该方法从每个YUV颜色通道中丢失数据的全部后验分布中提取这些。该模型的本质意味着难以从中抽取缺失数据的多元概率分布。本文展示了如何通过数值方法来克服这一问题。这种方法的效率取决于这样一个事实,即数据只能取很少数量的有限值。 !20

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