基于深度学习的自适应视频流预测模型

Anirban Lekharu, K. Y. Moulii, A. Sur, A. Sarkar
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引用次数: 13

摘要

在不断变化的网络环境中,提高给定视频流会话的客户端的整体体验质量(QoE)是一项具有挑战性的任务。无论网络中采用何种带宽分配方案,都需要在客户端采用动态比特率自适应策略,使会话的总体QoE最大化。尽管有许多最先进的自适应比特率流策略,但它们都有一些关键的缺点,这些缺点可能会严重限制最终用户可能实现的总体QoE。例如,使用一组固定规则的QoE管理可能并不总是保证最佳带宽利用率、视频质量增强和准确的缓冲区估计,特别是在面对严重变化且通常不可预测的带宽波动时。为了在各种不同的网络条件和QoE参数中处理这些问题,最近正在使用机器学习策略。ML方法基于与过去接收到的视频片段相对应的网络带宽、实际接收比特率、片段大小等相关的各种观察来训练QoE模型。在这项工作中,我们提出了一个基于深度神经网络的模型,该模型选择适当的视频比特率,以最大化用户的整体QoE。总体QoE是各种输入参数(如感知视频质量、缓冲时间和视频会话的平滑度)的线性组合。实验结果表明,与Pensieve(一种最先进的基于ML的方法)相比,所提出的架构将客户端实现的平均QoE提高了约8.84%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning based Prediction Model for Adaptive Video Streaming
Improving the overall Quality of Experience (QoE) of a client for a given video streaming session is a challenging task in a continuously varying network environment. A dynamic bit-rate adaptation strategy at the client side that can maximize the overall QoE for a session is required irrespective of the bandwidth allocation scheme adopted in-network. Even though there are a plethora of state-of-the-art strategies for adaptive bit-rate streaming, they suffer from a few key shortcomings which may significantly restrict the overall QoE potentially achievable by an end-user. For instance, QoE management using a fixed set of rules may not always guarantee optimal bandwidth utilization, video quality enhancement and accurate buffer estimation, especially in the face of severely varying and often unpredictable bandwidth fluctuations. To handle these issues across a wide range of varying network conditions and QoE parameters, machine learning strategies are being used in recent times. ML approaches train the QoE models based on diverse observations related to network bandwidth, actually received bitrate, segment size, etc, corresponding to video segments received in the past. In this work, we propose a Deep Neural Network based model that selects the appropriate video bit-rates in order to maximize the overall QoE of a user. The overall QoE is obtained as a linear combination of various input parameters such as perceived video quality, buffering time and smoothness of the video session. Experimental results reveal that the proposed architecture improves the average QoE achieved by a client by ≈8.84% when compared against Pensieve, a state-of-the-art ML based approach.
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