학술논문

AVIRA: Enhanced Multipath for Content-aware Adaptive Virtual Reality
Document Type
Conference
Source
2020 International Wireless Communications and Mobile Computing (IWCMC) Mobile Computing (IWCMC), 2020 International Wireless Communications and. :917-922 Jun, 2020
Subject
Communication, Networking and Broadcast Technologies
Linear regression
Monitoring
Throughput
Real-time systems
Feature extraction
Protocols
Machine learning algorithms
machine learning
multipath TCP
regression
virtual reality
network transport improvement
neural network
Language
ISSN
2376-6506
Abstract
This paper presents Adaptive VR (AVIRA), a scheme that implements a Virtual Reality (VR) content-aware prioritisation transport to extend Multipath TCP (MPTCP) functionalities and improve its performance. To do so, AVIRA monitors the subflows operation and forecasts subflows' performance by applying an Machine Learning (ML) approach to evaluate a set of features - such as latency and throughput - for every subflow available. This ML approach forecasts the performance of these features through linear regression and applies a linear classifier by using a weighted sum on the forecast results. When the traffic of a specific VR component is detected, AVIRA performs its prioritisation scheme by redirecting packets to the subflow with the best set of forecasted features. AVIRA outperforms the algorithms used for comparison and shows that the use of an ML approach in a “low-level” application is viable, especially in situations where the network features under scrutiny are subject to higher variations. In these scenarios, the AVIRA scheme can be outstandingly efficient.