Multiuser Video Streaming Rate Adaptation: A Physical Layer Resource-Aware Deep Reinforcement Learning Approach
We consider a multi-user video streaming service optimization problem over a time-varying and mutually interfering multi-cell wireless network. The key research challenge is to appropriately adapt each user's video streaming rate according to the radio frequency environment (e.g., channel fadin...
Saved in:
Main Authors | , , , , , |
---|---|
Format | Journal Article |
Language | English |
Published |
01.02.2019
|
Subjects | |
Online Access | Get full text |
Cover
Loading…
Summary: | We consider a multi-user video streaming service optimization problem over a
time-varying and mutually interfering multi-cell wireless network. The key
research challenge is to appropriately adapt each user's video streaming rate
according to the radio frequency environment (e.g., channel fading and
interference level) and service demands (e.g., play request), so that the
users' long-term experience for watching videos can be optimized. To address
the above challenge, we propose a novel two-level cross-layer optimization
framework for multiuser adaptive video streaming over wireless networks. The
key idea is to jointly design the physical layer optimization-based beamforming
scheme (performed at the base stations) and the application layer Deep
Reinforcement Learning (DRL)-based scheme (performed at the user terminals), so
that a highly complex multi-user, cross-layer, time-varying video streaming
problem can be decomposed into relatively simple problems and solved
effectively. Our strategy represents a significant departure for the existing
schemes where either short-term user experience optimization is considered, or
only single-user point-to-point long-term optimization is considered. Extensive
simulations based on real-data sets show that the proposed cross-layer design
is effective and promising. |
---|---|
DOI: | 10.48550/arxiv.1902.00637 |