通过轻量级比特流分析预测网络视频的感知质量

Abdul Hameed, Rui Dai, B. Balas
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引用次数: 2

摘要

随着无线联网和嵌入式设备(如手机、传感器等)视频流量的指数级增长,需要一种实时、低复杂度的视频感知质量预测机制,网络协议可以在此基础上控制视频质量,优化网络资源,以满足用户的体验质量需求。通过对压缩后的视频码流进行部分解析,提出了一种高效、轻量级的视频质量预测模型。引入了一组特征来反映视频内容的特征以及由于压缩和传输而产生的失真。所有的特征都可以在解析模式下直接从H.264/AVC压缩的比特流中获得,而不需要解码宏块中的像素信息。基于这些特征,训练人工神经网络模型进行感知质量预测。评估结果表明,该预测模型可以通过较低的计算成本实现对感知视频质量的准确预测。因此,它非常适合嵌入式设备上的实时网络视频应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting the perceptual quality of networked video through light-weight bitstream analysis
With the exponential growth of video traffic over wireless networked and embedded devices such as mobile phones and sensors, mechanisms are needed to predict the perceptual quality of video in real time and with low complexity, based on which networking protocols can control video quality and optimize network resources to meet the quality of experience (QoE) requirements of users. This paper proposes an efficient and light-weight video quality prediction model through partial parsing of compressed video bitstreams. A set of features were introduced to reflect video content characteristics and distortions caused by compression and transmission. All the features can be obtained directly from the H.264/AVC compressed bitstream in parsing mode without decoding the pixel information in macroblocks. Based on these features, an artificial neural network model was trained for perceptual quality prediction. Evaluation results show that the proposed prediction model can achieve accurate prediction of perceptual video quality through low computation costs. Therefore, it is well-suited for real time networked video applications on embedded devices.
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