基于运动活动的自适应帧恢复

Tian-sheng Tang, Jin Wang, Yunqiang Liu, Yizhi Gao, Songyu Yu
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引用次数: 5

摘要

压缩视频的全帧丢失在容易出错的网络上传输是非常常见的,因为每个编码图像通常被打包成一个数据包,以减少传输的比特流开销。本文提出了一种自适应帧恢复算法,该算法创新性地将三维递归搜索(3DRS)运动估计方法引入帧恢复(FR)中,并根据前一帧的运动活动统计动态选择基于3DRS的恢复和基于运动矢量复制(MVC)的恢复。如果帧的运动活动性较大,我们采用基于3drs的帧恢复。否则使用基于mvc的FR。对于前一种方法,我们首先考虑到前一帧的可用运动信息与真实运动轨迹不接近,执行modfief 3DRS对前一帧的运动矢量(mv)进行重新估计。然后将mv外推并细化为丢失帧的mv。使用运动补偿恢复丢失的帧。对于基于mvc的帧间隔,从解码器中得到的前一帧的运动信息被重用。实验结果表明,我们提出的解决方案在PSNR和视觉质量方面都取得了显著的改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive frame recovery based on motion activity
Whole-frame loss of the compressed video is very common in transmission over error-prone networks since each coded picture is usually packetized into one single packet in order to reduce the bitstream overhead for transmission. In this paper we present an adaptive frame recovery algorithm which innovatively introduces the three-dimensional recursive search (3DRS) motion estimation method into fram reovr (FR), and dynamically selects between 3DRS based recovery and motion vector copy (MVC) based recovery according to the statistics of motion activity of previous frames. If the motion activity of the frame is large, we adopt 3DRS-based frame recovery. Otherwise MVC-based FR is used. For the former method, we first perform the modfief 3DRS to re-estimate the motion vectors (MVs) of the previous frame considering that the available motion information of previous frames is not close to the true motion trajectory. Then the MVs are extrapolated and refined as the MVs of the lost frame. The missing frame is recovered using motion compensation. For MVC-based FR, motion information of previous frames, derived from the decoder is reused. Experimental results show that our proposed solutions can achieve significant improvements in both PSNR and visual quality.
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