基于闭环聚类的实时视频流全局带宽预测

Sepideh Afshar;Reza Razavi;Mohammad Moshirpour
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引用次数: 0

摘要

准确的吞吐量预测对于确保实时通信(RTC)应用的无缝运行至关重要。在处理无线接入链路时,这些对准确吞吐量预测的要求变得特别具有挑战性,因为它们固有地表现出波动的带宽。在这种情况下,确保卓越的用户体验质量(QoE)取决于短期内可用带宽的准确预测,因为它在指导视频速率适应方面起着关键作用。然而,目前的短期带宽预测(SBP)方法难以在动态变化的现实网络环境中充分发挥作用,并且缺乏适应各种网络条件的通用性。此外,获取捕获真实网络复杂性的长且具有代表性的跟踪是具有挑战性的。为了克服这些挑战,我们提出了基于闭环聚类的SBP全球预测模型(GFMs)。与局部模型不同,GFMs对所有迹线应用相同的功能,从而实现交叉学习,并利用迹线之间的关系来解决当前SBP算法中出现的性能问题。为了解决数据内部潜在的异质性并提高预测质量,利用聚类GFM根据预测精度对相似轨迹进行分组。最后,使用HSDPA 3G、NYC LTE和爱尔兰5G数据的真实数据集对所提出的方法进行了验证,结果表明该方法在准确性和泛化性方面有显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Closed-Loop Clustering-Based Global Bandwidth Prediction in Real-Time Video Streaming
Accurate throughput forecasting is essential for ensuring the seamless operation of Real-Time Communication (RTC) applications. These demands for accurate throughput forecasting become particularly challenging when dealing with wireless access links, as they inherently exhibit fluctuating bandwidth. Ensuring an exceptional user Quality of Experience (QoE) in this scenario depends on accurately predicting available bandwidth in the short term since it plays a pivotal role in guiding video rate adaptation. Yet, current methodologies for short-term bandwidth prediction (SBP) struggle to perform adequately in dynamically changing real-world network environments and lack generalizability to adapt across varied network conditions. Also, acquiring long and representative traces that capture real-world network complexity is challenging. To overcome these challenges, we propose closed-loop clustering-based Global Forecasting Models (GFMs) for SBP. Unlike local models, GFMs apply the same function to all traces enabling cross-learning, and leveraging relationships among traces to address the performance issues seen in current SBP algorithms. To address potential heterogeneity within the data and improve prediction quality, a clustered-wise GFM is utilized to group similar traces based on prediction accuracy. Finally, the proposed method is validated using real-world datasets of HSDPA 3G, NYC LTE, and Irish 5G data demonstrating significant improvements in accuracy and generalizability.
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