No-reference video quality assessment for SD and HD H.264/AVC sequences based on continuous estimates of packet loss visibility

S. Argyropoulos, A. Raake, Marie-Neige Garcia, P. List
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引用次数: 36

Abstract

In this paper, a novel method for predicting the visibility of packet losses in SD and HD H.264/AVC video sequences and modeling their impact on perceived quality is proposed. Based on the findings of a new subjective experiment it is initially shown that the classification of packet loss visibility in a binary fashion is not sufficient to model the perceptual degradations caused by the transmission errors. The proposed no-reference algorithm extracts a set of features from the video bit-stream to account for the spatial and temporal characteristics of the video content and the induced distortion due to the network impairments. Subsequently, the visibility of packet losses is predicted in a continuous fashion using Support Vector Regression. Finally, a no-reference bit-stream based video quality assessment model that explicitly employs the predicted packet loss visibility estimates is presented. The evaluation of the proposed model demonstrates that the use of continuous estimates for the visibility of packet losses improves the performance of the video quality assessment model.
基于连续估计丢包可见性的SD和HD H.264/AVC序列的无参考视频质量评估
本文提出了一种预测SD和HD H.264/AVC视频序列中丢包可见性的新方法,并对其对感知质量的影响进行建模。基于一项新的主观实验结果,初步表明以二进制方式对丢包可见性进行分类不足以模拟由传输错误引起的感知退化。提出的无参考算法从视频比特流中提取一组特征,以考虑视频内容的时空特征以及由于网络损伤引起的失真。随后,使用支持向量回归以连续的方式预测丢包的可见性。最后,提出了一种基于无参考比特流的视频质量评估模型,该模型明确采用预测的丢包可见性估计。对该模型的评价表明,对丢包可见性的连续估计提高了视频质量评估模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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