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Estimation techniques to measure subjective quality on live video streaming in Cloud Mobile Media services

机译:用于评估Cloud Mobile Media服务中实时视频流的主观质量的估算技术

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The adoption of smart phones, the increased access to mobile broadband networks and the availability of public cloud infrastructures are aligning to the next generation of truly ubiquitous multimedia services, known as Cloud Mobile Media (CMM) services offering mobile video. Nevertheless, due to an inherit higher and variable end to end delay mainly as a result of the virtualization process, new challenges appear. One challenge is given by live video streaming applications when trying to keep a good Quality of Experience of the delivered video, measured in terms of a subjective video quality metric, named Mean Opinion Score (MOS). Our goal is to estimate and predict this subjective metric in a holistic manner using different estimation techniques, such as Artificial Neural Networks, Factor Analysis and Multinomial Linear Regression, with Full Reference and Non Reference approaches. For this, we have analyzed and measured different variables related to Quality of Service, bit stream and basic video quality metrics, throughout the CMM infrastructure. With these variables, we apply the mentioned techniques which allows us to estimate MOS of the delivered video in a robust and reliable way, achieving an average estimation error between 0.46 and 15.94% depending on the technique used. The real MOS has been evaluated through surveys. Finally, we compare the accuracy of the estimated MOS against well known publicly available video quality algorithms, following the recommendations given by Video Quality Experts Group. (C) 2017 Elsevier B.V. All rights reserved.
机译:智能电话的采用,对移动宽带网络的越来越多的访问以及公共云基础设施的可用性,正与下一代真正普遍存在的多媒体服务(称为提供移动视频的云移动媒体(CMM)服务)保持一致。然而,由于主要由于虚拟化过程而导致的继承性更高且可变的端到端延迟,因此出现了新的挑战。当试图保持交付的视频的良好体验质量时,实时视频流应用程序提出了一个挑战,这是根据主观视频质量度量标准(即平均意见得分(MOS))进行衡量的。我们的目标是使用完全参考和非参考方法,使用人工神经网络,因子分析和多项式线性回归等不同估算技术,以整体方式估算和预测此主观指标。为此,我们在整个CMM基础架构中分析和测量了与服务质量,比特流和基本视频质量指标有关的不同变量。利用这些变量,我们应用了提及的技术,该技术使我们能够以可靠且可靠的方式估算已交付视频的MOS,根据所使用的技术,平均估算误差在0.46%至15.94%之间。实际MOS已通过调查评估。最后,根据视频质量专家组的建议,我们将估算的MOS的准确性与众所周知的公开视频质量算法进行了比较。 (C)2017 Elsevier B.V.保留所有权利。

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