A New Temporal Error Concealment Algorithm for H.264/AVC Using Motion Strength of Neighboring Area

Huang Zhi-hua, Yi Ben-shun
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引用次数: 1

Abstract

Transmission of compressed video over error prone channels may result in packet losses or errors, which can significantly degrade the image quality. Error concealment is an effective approach to reduce the influence. In this paper, a new temporal error concealment algorithm for the H.264 is presented, which efficiently utilize the motion vectors of neighboring top/bottom macro blocks adjacent to the lost macro block. Firstly, the motion strength of neighboring area (MSNA) is estimated by calculating a ratio involving the motion vectors of adjacent macro blocks. Then the motion vector recovery method either minimum variance of boundary motion vectors method or polynomial interpolation method is employed according to the magnitude of MSNA. Experimental results show that the proposed algorithm improves the subjective video quality and obtains a gain of about 0.2 dB~3 dB in PSNR, compared with conventional temporal error concealment algorithms in the condition of equal packet loss rate.
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基于邻域运动强度的H.264/AVC时序错误隐藏算法
在容易出错的信道上传输压缩视频可能会导致丢包或错误,从而严重降低图像质量。错误隐藏是降低影响的有效途径。本文提出了一种新的H.264时序错误隐藏算法,该算法有效地利用了丢失宏块附近的上下宏块的运动矢量。首先,通过计算相邻宏块运动向量的比值来估计相邻区域的运动强度;然后根据MSNA的大小分别采用运动矢量恢复法、边界运动矢量最小方差法或多项式插值法。实验结果表明,在丢包率相同的情况下,与传统的时间错误隐藏算法相比,该算法提高了主观视频质量,PSNR增益约为0.2 dB~3 dB。
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