基于移动终端的视频业务QoE监控方法研究

Xiwen Liu, Xiaoming Tao, Li Wang, Y. Zhan, Jianhua Lu
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引用次数: 2

摘要

体验质量(QoE)对于无线网络运营商的技术发展和利润提升至关重要。然而,由于传统的网络质量指标与用户的视听体验没有直接关系,运营商仍然无法有效地监控用户的QoE。基于移动设备是最接近用户的网络元素这一事实,我们探索了通过利用移动终端功能来估算用户QoE的可能性。为此,我们首先在中国著名无线网络运营商(即中国联通)的支持下,通过自主开发的移动应用程序在现实条件下运行,收集了8万多条数据记录。收集的数据包括无线视频业务的89个客观参数和4种主观用户评分。然后,基于Spearman相关分析对数据进行预处理和特征选择。最后,分别基于分类树C4.5算法和梯度增强决策树(GBDT)算法建立了QoE估计的预测模型。实验结果表明,这两种基于决策树的模型优于其他机器学习算法。具体来说,GBDT在5级量表上的预测精度约为70%,在更实用的3级量表上的预测精度接近90%。因此,本研究有力地证明了基于用户终端的QoE预测方法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing a QoE Monitoring Approach for Video Service Based on Mobile Terminals
Quality of experience (QoE) is crucial for wireless network operators with respect to both technical evolution and profit promotion. However, operators are still unable to monitor user QoE effectively because traditional network quality indices are not directly related to the user’s audiovisual experiences. Motivated by the fact that mobile devices are the network elements closest to the users, we explore the possibility of estimating user QoE by capitalizing on mobile terminal capabilities. For this purpose, we first collect over eighty thousand data records through a self-developed mobile application operating in the real world conditions with the support of a prominent Chinese wireless network operator (i.e., China Unicom). The collected data consist of 89 objective parameters concerning wireless video services and 4 types of subjective user scores. Then, we perform data preprocessing and feature selection based on Spearman correlation analyses. Finally, we establish two predictive models for QoE estimation based on the classification tree C4.5 algorithm and the gradient boosting decision tree (GBDT) algorithm, respectively. The experimental results demonstrate that the two decision tree-based models outperform other machine learning algorithms. Specifically, the prediction accuracy of the GBDT is approximately 70% for a five-level scale and approaches 90% for a more practical 3-level scale. Therefore, this study strongly demonstrates the feasibility of the user terminal-based approach for QoE prediction.
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