可扩展视频传输:丢包引起的失真建模和估计

Shujie Liu, Chang Wen Chen
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引用次数: 3

摘要

为了给异构网络和终端设备提供增强的多媒体服务,可扩展视频编码(SVC)被开发出来,在单个比特流中嵌入不同质量的视频。与传统的压缩视频传输类似,视频比特流的不同分组对接收到的视频质量有不同的影响。因此,在设计各种网络条件下的鲁棒视频传输策略时,需要进行失真建模和估计。本文提出了SVC传输中丢包失真建模与估计的第一种方案。该方案适用于多种视频通信和网络场景,可以利用准确的失真信息提高视频传输性能。可伸缩视频失真估计的一个主要挑战是由于SVC采用了更复杂的预测结构,这使得误差传播的跟踪比不可伸缩编码视频要困难得多。在本研究中,我们通过系统地跟踪误差在各种预测轨迹下的传播来解决这一挑战。将压缩视频的补充信息嵌入到数据包中,大大简化了建模和估计。此外,在预测间信息的补充下,可以在不解析视频比特流的情况下进行失真估计,大大降低了计算量和存储成本。实验结果表明,该方法对数据大小的影响可以忽略不计,能够以很高的精度跟踪和估计失真。这是有史以来第一个可扩展的视频传输失真建模和估计方案,可以部署在网关或接收器,因为它的低计算和内存成本。
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Scalable video transmission: packet loss induced distortion modeling and estimation
To provide enhanced multimedia services for heterogeneous networks and terminal devices, Scalable Video Coding (SVC) has been developed to embed different quality of video in a single bitstream. Similar to classical compressed video transmission, different packets of a video bitstream have different impacts on received video quality. Therefore, distortion modeling and estimation are necessary in designing a robust video transmission strategy under various network conditions. In the paper, we present the first scheme of packet loss induced distortion modeling and estimation in SVC transmission. The proposed scheme is applicable to numerous video communication and networking scenarios in which accurate distortion information can be utilized to enhance the performance of video transmission. One major challenge in scalable video distortion estimation is due to the adoption of more complicated prediction structure in SVC, which makes the tracking of error propagation much more difficult than the non-scalable encoded video. In this research, we tackle such challenge by systematically tracking the propagation of errors under various prediction trajectories. Supplemental information about the compressed video is embedded into data packets to substantially simplify the modeling and estimation. Moreover, with supplemental data of inter prediction information, distortion estimation can be processed without parsing video bitstream which results in much lower computation and memory cost. With negligible effects on the data size, experimental results show that the proposed scheme is able to track and estimate the distortion with very high accuracy. This first ever scalable video transmission distortion modeling and estimation scheme can be deployed at either gateways or receivers because of its low computation and memory cost.
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