Tan Phan-Xuan, Tho Nguyen Duc, Chanh Minh Tran, E. Kamioka
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引用次数: 0
摘要
持续的QoE预测对于最大限度地提高观众满意度至关重要,视频服务提供商可以通过它来提高收入。连续预测QoE具有挑战性,因为它需要能够捕获QoE影响因素之间复杂依赖关系的QoE模型。利用长短期记忆(LSTM)网络的现有方法成功地建立了这种长期依赖关系的模型,提供了优越的QoE预测性能。然而,LSTM序列计算的固有缺点会导致训练和预测任务的计算成本很高。WaveNet是一种用于生成原始音频波形的深度神经网络。由于它成功地利用了因果卷积和扩展卷积并行计算的特点来处理时间序列数据(如音频信号),因此立即受到了广泛的关注。受WaveNet成功的启发,本文提出了基于WaveNet的QoE模型,用于视频流服务中的连续QoE预测。该模型在LFOVIA Video QoE和LIVE Mobile Stall Video II两个公开可用的数据库上进行训练和测试。实验结果表明,该模型在处理时间上优于基线模型,同时保持了足够的精度。
Continuous QoE prediction is crucial in the purpose of maximizing viewer satisfaction, by which video service providers could improve the revenue. Continuously predicting QoE is challenging since it requires QoE models that are capable of capturing the complex dependencies among QoE influence factors. The existing approaches that utilize Long-Short-Term-Memory (LSTM) network successfully model such long-term dependencies, providing the superior QoE prediction performance. However, the inherent drawback of sequential computing of LSTM will result in high computational cost in training and prediction tasks. Recently, WaveNet, a deep neural network for generating raw audio waveform, has been introduced. Immediately, it gains a great attention since it successfully leverages the characteristic of parallel computing of causal convolution and dilated convolution to deal with time-series data (e.g., audio signal). Being inspired by the success of WaveNet, in this paper, we propose WaveNet-based QoE model for continuous QoE prediction in video streaming services. The model is trained and tested upon on two publicly available databases, namely, LFOVIA Video QoE and LIVE Mobile Stall Video II. The experimental results demonstrate that the proposed model outperforms the baselines models in terms of processing time, while maintaining sufficient accuracy.