流媒体视频体验质量评价研究

A. Ivchenko, Pavel Kononyuk, A. Dvorkovich, L. Antiufrieva
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引用次数: 1

摘要

HTTP上的动态自适应流提供了大多数多媒体服务的工作,然而,这种技术的性质使QoE(体验质量)的评估进一步复杂化。本文研究了各种客观因素对流媒体视频QoE主观估计的影响。给出了标准特征和手工特征,并给出了它们的相关性和显著性p值。提出了基于回归和梯度增强的VQA (Video Quality Assessment)模型,该模型在验证子样本上的SRCC达到0.9647。所提出的回归模型适用于实际应用(有或没有参考视频);梯度增强回归模型为进一步改进质量估计模型提供了前景。我们以SQoE-III数据库为例,它是迄今为止同类数据库中最大和最现实的数据库。VQA(视频质量评估)模型可在https://github.com/AleksandrIvchenko/QoE-assesment上获得
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study on the Assessment of the Quality of Experience of Streaming Video
Dynamic adaptive streaming over HTTP provides the work of most multimedia services, however, the nature of this technology further complicates the assessment of the QoE (Quality of Experience). In this paper, the influence of various objective factors on the subjective estimation of the QoE of streaming video is studied. The paper presents standard and handcrafted features, shows their correlation and p-Value of significance. VQA (Video Quality Assessment) models based on regression and gradient boosting with SRCC reaching up to 0.9647 on the validation subsample are proposed. The proposed regression models are adapted for applied applications (both with and without a reference video); the Gradient Boosting Regressor model is perspective for further improvement of the quality estimation model. We take SQoE-III database, so far the largest and most realistic of its kind. The VQA (video quality assessment) models are available at https://github.com/AleksandrIvchenko/QoE-assesment
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