360NorVic: 360-Degree Video Classification from Mobile Encrypted Video Traffic
This addresses a specific challenge for Internet Service Providers and Mobile Network Operators in managing high-bandwidth encrypted video traffic, though it is an incremental application of existing methods to a new domain.
The paper tackles the problem of identifying 360-degree video traffic from encrypted mobile streams to help network operators optimize performance, achieving over 95% accuracy in near-realtime and offline classification at the packet level.
Streaming 360° video demands high bandwidth and low latency, and poses significant challenges to Internet Service Providers (ISPs) and Mobile Network Operators (MNOs). The identification of 360° video traffic can therefore benefits fixed and mobile carriers to optimize their network and provide better Quality of Experience (QoE) to the user. However, end-to-end encryption of network traffic has obstructed identifying those 360° videos from regular videos. As a solution this paper presents 360NorVic, a near-realtime and offline Machine Learning (ML) classification engine to distinguish 360° videos from regular videos when streamed from mobile devices. We collect packet and flow level data for over 800 video traces from YouTube & Facebook accounting for 200 unique videos under varying streaming conditions. Our results show that for near-realtime and offline classification at packet level, average accuracy exceeds 95%, and that for flow level, 360NorVic achieves more than 92% average accuracy. Finally, we pilot our solution in the commercial network of a large MNO showing the feasibility and effectiveness of 360NorVic in production settings.