Abstract
Despite the vast literature and major developments
in HTTP adaptive video streaming (HAS) technology, stalling
events due to re-buffering still are by far the worst Quality
of Experience (QoE) degradation, and thus, represent a major
issue for ISPs. In this paper, we address the problem of real-
time QoE monitoring of HAS, focusing on the detection of re-
buffering events and QoE-relevant metrics, for the particular case
of YouTube. Given the wide adoption of end-to-end encryption,
we resort to machine learning models to predict these metrics
directly from the analysis of the encrypted traffic. The salient
feature of our approach ViCrypt is its ability to perform QoE
predictions in real-time, during the course of an ongoing YouTube
streaming session, relying on constant memory, stream-like inputs
continuously extracted from the encrypted stream of packets. We
show through empirical evaluations that ViCrypt can predict
the occurrence of re-buffering events with a time granularity as
small as one second with very high accuracy. By aggregating
independent predictions, ViCrypt is able to accurately estimate
per-video-session QoE-relevant metrics such as initial playback
delay, number of re-buffering events and stalling ratio. In this
situation, we investigate if a decent prediction performance can
also be reached by selecting reduced feature sets based on the
relevance of the features. Moreover, we explore the potential of
including recurrent features, namely, stalling predictions from
past time slots, to improve the prediction performance.
Originalsprache | Englisch |
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Titel | IEEE INFOCOM 2019 - IEEE Conference on Computer Communications Workshops (INFOCOM WKSHPS) |
Seiten | 688-695 |
Seitenumfang | 8 |
DOIs | |
Publikationsstatus | Veröffentlicht - 2019 |
Veranstaltung | 2nd International Workshop on Network Intelligence (NI 2019) Machine Learning for Networking - Dauer: 29 Apr. 2019 → … |
Konferenz
Konferenz | 2nd International Workshop on Network Intelligence (NI 2019) Machine Learning for Networking |
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Zeitraum | 29/04/19 → … |
Research Field
- Ehemaliges Research Field - Experience Measurement
- Ehemaliges Research Field - Data Science