Inferring Streaming Video Quality from Encrypted Traffic

Author:

Bronzino Francesco1,Schmitt Paul2,Ayoubi Sara3,Martins Guilherme4,Teixeira Renata3,Feamster Nick4

Affiliation:

1. Inria and Nokia Bell Labs, Paris, France

2. Princeton University, Princeton, NJ, USA

3. Inria, Paris, France

4. University of Chicago, Chicago, IL, USA

Abstract

Inferring the quality of streaming video applications is important for Internet service providers, but the fact that most video streams are encrypted makes it difficult to do so. We develop models that infer quality metrics (\ie, startup delay and resolution) for encrypted streaming video services. Our paper builds on previous work, but extends it in several ways. First, the models work in deployment settings where the video sessions and segments must be identified from a mix of traffic and the time precision of the collected traffic statistics is more coarse (\eg, due to aggregation). Second, we develop a single composite model that works for a range of different services (\ie, Netflix, YouTube, Amazon, and Twitch), as opposed to just a single service. Third, unlike many previous models, our models perform predictions at finer granularity (\eg, the precise startup delay instead of just detecting short versus long delays) allowing to draw better conclusions on the ongoing streaming quality. Fourth, we demonstrate the models are practical through a 16-month deployment in 66 homes and provide new insights about the relationships between Internet "speed'' and the quality of the corresponding video streams, for a variety of services; we find that higher speeds provide only minimal improvements to startup delay and resolution.

Funder

Institut national de recherche en informatique et en automatique

Google

National Science Foundation

Agence Nationale de la Recherche

Publisher

Association for Computing Machinery (ACM)

Subject

General Medicine

Reference41 articles.

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3. Suffering from buffering? Detecting QoE impairments in live video streams

4. GSM Association. 2015. Network Management of Encrypted Traffic: Version 1.0. https://www.gsma.com/newsroom/wpcontent/ uploads/WWG-04-v1-0.pdf. GSM Association. 2015. Network Management of Encrypted Traffic: Version 1.0. https://www.gsma.com/newsroom/wpcontent/ uploads/WWG-04-v1-0.pdf.

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