UGC视频质量预测的时间统计模型

Zhengzhong Tu, Chia-Ju Chen, Yilin Wang, N. Birkbeck, Balu Adsumilli, A. Bovik
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引用次数: 1

摘要

用户生成内容(UGC)视频质量的盲目评估已经成为一个趋势和挑战问题。以前的研究已经证明了自然场景统计在捕捉空间扭曲方面的有效性。然而,对UGC的时间视频统计的探索相对有限。本文通过分析时间带通域的规律,提出了第一个通用的、有效的、高效的用于UGC视频质量评估的时间或运动相关失真的时间统计模型。提出的时间模型可以作为一个插件模块来增强现有的缺乏运动相关特征的无参考视频质量预测器。我们在最近的大规模UGC视频数据库上的实验结果表明,所提出的模型可以在非常合理的计算成本下显著提高现有方法的性能。
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A Temporal Statistics Model For UGC Video Quality Prediction
Blind video quality assessment of user-generated content (UGC) has become a trending and challenging problem. Previous studies have shown the efficacy of natural scene statistics for capturing spatial distortions. The exploration of temporal video statistics on UGC, however, is relatively limited. Here we propose the first general, effective and efficient temporal statistics model accounting for temporal- or motion-related distortions for UGC video quality assessment, by analyzing regularities in the temporal bandpass domain. The proposed temporal model can serve as a plug-in module to boost existing no-reference video quality predictors that lack motion-relevant features. Our experimental results on recent large-scale UGC video databases show that the proposed model can significantly improve the performances of existing methods, at a very reasonable computational expense.
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