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QoE-driven video delivery improvement using packet loss prediction

机译:使用丢包预测的QoE驱动的视频交付改进

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摘要

The video delivery over wireless networks has risen in popularity in the recent years. However, in order to provide a high quality of experience (QoE) to the end users, it is necessary to deal with several challenges ranging from the fluctuating bandwidth and scarce resources to the high error rates. The use of these error-prone networks unveils the need for an adaptive mechanism to ensure the quality of the delivered video streams. Adaptive forward error correction (FEC) techniques with QoE assurance are desired to protect the stream, preserving the video quality. The adaptive FEC-based mechanism proposed in this article uses several video characteristics and packet loss rate prediction to shield real-time video transmission over static wireless mesh networks, improving both user experience and the usage of resources. This is possible through a combination of a random neural network, to categorise motion intensity of the videos, and an ant colony optimisation scheme, for dynamic redundancy allocation. The benefits and drawbacks are demonstrated through simulations and assessed with QoE metrics, showing that the proposed mechanism outperforms both adaptive and non-adaptive schemes.
机译:近年来,通过无线网络的视频传送已经越来越流行。但是,为了向最终用户提供高质量的体验(QoE),有必要应对从带宽波动和稀缺资源到高错误率等一系列挑战。这些易于出错的网络的使用揭示了对自适应机制的需求,以确保所传送视频流的质量。需要具有QoE保证的自适应前向纠错(FEC)技术来保护流,同时保持视频质量。本文提出的基于自适应FEC的机制利用了几种视频特性和丢包率预测来屏蔽静态无线网状网络上的实时视频传输,从而改善了用户体验和资源使用。这可以通过将随机神经网络(用于对视频的运动强度进行分类)和蚁群优化方案(用于动态冗余分配)的组合来实现。通过仿真证明了优缺点,并通过QoE指标进行了评估,表明所提出的机制优于自适应和非自适应方案。

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