动态带宽分配的实时VBR视频流量预测

Yao-Jen Liang
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引用次数: 71

摘要

本文系统地研究了长期、在线、实时可变比特率(VBR)视频流量预测,它是未来网络和互联网多媒体业务先进的预测动态带宽控制和分配框架的关键和复杂组成部分。我们重点研究了基于神经网络的交通预测方法,并证明了通过多分辨率学习可以显著提高神经网络预测器的预测性能和鲁棒性。研究表明,通过多分辨率学习训练的神经网络流量预测器(称为多分辨率学习NN流量预测器)可以成功地提前数百帧预测各种实际VBR视频流量,从而为预测动态带宽控制和分配机制奠定了坚实的基础。此外,还详细讨论了基于长期流量预测的动态带宽控制/分配。
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Real-Time VBR Video Traffic Prediction for Dynamic Bandwidth Allocation
In this paper, we systematically investigate the long-term, online, real-time variable-bit-rate (VBR) video traffic prediction, which is the key and complicated component for advanced predictive dynamic bandwidth control and allocation framework for the future networks and Internet multimedia services. We focus on neural network-based approach for traffic prediction and demonstrate that the prediction performance and robustness of neural network predictors can be significantly improved through multiresolution learning. We show that neural network traffic predictor trained through the multiresolution learning (called multiresolution learning NN traffic predictor) can successfully predict various real-world VBR video traffic up to hundreds of frames in advance, which then lays a solid foundation for predictive dynamic bandwidth control and allocation mechanism. Also, dynamic bandwidth control/allocation based on long-term traffic prediction is discussed in detail.
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