基于支持向量回归的视频质量预测

Beibei Wang, D. Zou, Ran Ding
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引用次数: 7

摘要

为了测量视频的体验质量(QoE),目前的客观质量度量方法主要集中在如何设计一个视频质量模型,该模型考虑了提取的特征的影响,并对人类视觉系统(HVS)进行建模。然而,试图对HVS进行建模的视频质量指标面临着一个事实,即HVS过于复杂,无法很好地理解。本文提出了一种基于支持向量机(svm)监督学习的视频质量度量方法,而不是用一些函数对目标质量度量进行建模。与之前基于g .1070的视频质量预测相比,本文提出的基于SVM的视频质量预测可以更好地逼近NTIA-VQM和MOS值。我们进一步研究了如何选择能够有效地作为支持向量机输入变量的某些特征。
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Support Vector Regression Based Video Quality Prediction
To measure the quality of experience (QoE) of a video, the current approaches of objective quality metrics development focus on how to design a video quality model, which considers the effects of the extracted features and models the Human Visual System (HVS). However, video quality metrics which try to model the HVS confronts a fact that HVS is too complicated and not well understood to model. In this paper, instead of modeling the objective quality metrics with some functions, we proposed to build a video quality metrics using the support vector machines (SVMs) supervised learning. With the proposed SVM based video quality prediction, it allows a much better approximation to the NTIA-VQM and MOS values, compared to the previous G.1070-based video quality prediction. We further investigated how to choose the certain features which can be efficiently used as SVM input variables.
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