DeepCrypt - Deep Learning for QoE Monitoring and Fingerprinting of User Actions in Adaptive Video Streaming

P. Casas, Michael Seufert, Sarah Wassermann, B. Gardlo, Nikolas Wehner, R. Schatz
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引用次数: 1

Abstract

We introduce DeepCrypt, a deep-learning based approach to analyze YouTube adaptive video streaming Quality of Experience (QoE) from the Internet Service Provider (ISP) perspective, relying exclusively on the analysis of encrypted network traffic. Using raw features derived on-line from the encrypted stream of bytes, DeepCrypt infers six different video QoE indicators capturing the user-perceived performance of the service, including the initial playback delay, the number and frequency of rebuffering events, the video playback quality and encoding bitrate, and the number of quality changes. DeepCrypt offers deep visibility into the behavior of the end-user, enabling the fingerprinting and detection of different user actions on the video player, such as video pauses and playback scrubbing (forward, backward, out-of-buffer), offering a complete visibility on the video streaming process from in-network traffic measurements. Evaluations over a large and heterogeneous dataset composed of mobile and fixed-line measurements, using the YouTube HTML5 player, the native YouTube mobile app, as well as a generic HTML5 video player built on top of open source libraries, and considering measurements collected at different ISPs, confirm the out-performance of DeepCrypt over previously used shallow-learning models, and its generalization to different video players and network setups.
深度学习用于QoE监控和自适应视频流中用户动作的指纹识别
我们介绍了DeepCrypt,一种基于深度学习的方法,从互联网服务提供商(ISP)的角度分析YouTube自适应视频流体验质量(QoE),完全依赖于对加密网络流量的分析。使用从加密字节流中获得的原始特征,DeepCrypt推断出六种不同的视频QoE指标,这些指标捕获了用户感知的服务性能,包括初始播放延迟、重新缓冲事件的数量和频率、视频播放质量和编码比特率,以及质量变化的数量。DeepCrypt提供了对最终用户行为的深度可见性,能够识别和检测视频播放器上不同的用户操作,例如视频暂停和播放洗涤(向前,向后,超出缓冲区),从网络内流量测量中提供对视频流过程的完整可见性。使用YouTube HTML5播放器、原生YouTube移动应用程序以及基于开源库构建的通用HTML5视频播放器,对由移动和固定线路测量组成的大型异构数据集进行评估,并考虑在不同isp收集的测量结果,确认DeepCrypt优于先前使用的浅层学习模型,并将其推广到不同的视频播放器和网络设置。
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