XR流量时间表征及其在预测网络切片中的应用

Mattia Lecci, Federico Chiariotti, Matteo Drago, A. Zanella, M. Zorzi
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引用次数: 6

摘要

在过去的几年中,扩展现实(XR)由于其广泛的工业和商业应用而吸引了越来越多的兴趣,并且预计其受欢迎程度将在未来十年呈指数级增长。然而,XR的交互特性所施加的严格的服务质量(QoS)约束要求网络切片(NS)解决方案支持其在无线连接上的使用:在这种情况下,准恒定比特率(CBR)编码是一个很有前途的解决方案,因为它可以增加流的可预测性,使网络资源分配更容易。然而,XR流的流量表征仍然是一个很大程度上未被探索的主题,特别是这种编码。在这项工作中,我们描述了在真实设置中捕获的超过4小时的轨迹的XR流,分析了它们的时间相关性,并提出了未来帧大小的两种预测模型。我们的研究结果表明,即使是最先进的H.264 CBR模式也会有显著的帧大小波动,这可能会影响NS优化。我们提出的预测模型可以应用于不同的轨迹,甚至不同的内容,实现非常相似的性能。我们还在一个简单的NS用例中展示了网络资源效率和XR QoS之间的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporal Characterization of XR Traffic with Application to Predictive Network Slicing
Over the past few years, eXtended Reality (XR) has attracted increasing interest thanks to its extensive industrial and commercial applications, and its popularity is expected to rise exponentially over the next decade. However, the stringent Quality of Service (QoS) constraints imposed by XR’s interactive nature require Network Slicing (NS) solutions to support its use over wireless connections: in this context, quasi-Constant Bit Rate (CBR) encoding is a promising solution, as it can increase the predictability of the stream, making the network resource allocation easier. However, traffic characterization of XR streams is still a largely unexplored subject, particularly with this encoding. In this work, we characterize XR streams from more than 4 hours of traces captured in a real setup, analyzing their temporal correlation and proposing two prediction models for future frame size. Our results show that even the state-of-the-art H.264 CBR mode can have significant frame size fluctuations, which can impact the NS optimization. Our proposed prediction models can be applied to different traces, and even to different contents, achieving very similar performance. We also show the trade-off between network resource efficiency and XR QoS in a simple NS use case.
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