基于自回归模型和加权最小二乘的分组视频错误隐藏

Yongbing Zhang, Xinguang Xiang, Siwei Ma, Debin Zhao, Wen Gao
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引用次数: 8

摘要

本文将自回归(AR)模型应用于基于块的分组视频编码中的错误隐藏。损坏块内的每个像素以线性回归的方式恢复为前一帧内相应像素的加权和。提出了两种新的加权最小二乘法求解AR系数的算法。首先,提出了一种空间连续性约束下的系数求导算法,该算法使可用相邻块内加权平方误差之和最小;每个样本的自信权重与样本和损坏块之间的距离成反比。其次,提出了一种时间连续性约束下的系数推导算法,使前一帧内目标像素周围的加权平方误差之和最小;每个样本的置信权重与几何接近度的相似性以及灰度强度成正比。然后将两种算法产生的回归结果合并形成最终的恢复。各种实验结果表明,与其他方法相比,所提出的错误隐藏策略能够提高峰值信噪比(PSNR)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Auto Regressive Model and Weighted Least Squares Based Packet Video Error Concealment
In this paper, auto regressive (AR) model is applied to error concealment for block-based packet video encoding. Each pixel within the corrupted block is restored as the weighted summation of corresponding pixels within the previous frame in a linear regression manner. Two novel algorithms using weighted least squares method are proposed to derive the AR coefficients. First, we present a coefficient derivation algorithm under the spatial continuity constraint, in which the summation of the weighted square errors within the available neighboring blocks is minimized. The confident weight of each sample is inversely proportional to the distance between the sample and the corrupted block. Second, we provide a coefficient derivation algorithm under the temporal continuity constraint, where the summation of the weighted square errors around the target pixel within the previous frame is minimized. The confident weight of each sample is proportional to the similarity of geometric proximity as well as the intensity gray level. The regression results generated by the two algorithms are then merged to form the ultimate restorations. Various experimental results demonstrate that the proposed error concealment strategy is able to increase the peak signal-to-noise ratio (PSNR) compared to other methods.
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