TY - GEN
T1 - Auto regressive model and weighted least squares based packet video error concealment
AU - Zhang, Yongbing
AU - Xiang, Xinguang
AU - Ma, Siwei
AU - Zhao, Debin
AU - Gao, Wen
PY - 2010
Y1 - 2010
N2 - 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 signalto-noise ratio (PSNR) compared to other methods.
AB - 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 signalto-noise ratio (PSNR) compared to other methods.
UR - https://www.scopus.com/pages/publications/77952693279
U2 - 10.1109/DCC.2010.100
DO - 10.1109/DCC.2010.100
M3 - 会议稿件
AN - SCOPUS:77952693279
SN - 9780769539942
T3 - Data Compression Conference Proceedings
SP - 455
EP - 464
BT - Proceedings - Data Compression Conference, DCC 2010
T2 - Data Compression Conference, DCC 2010
Y2 - 24 March 2010 through 26 March 2010
ER -