NILGApr 2, 2021

Hybrid Policy Learning for Energy-Latency Tradeoff in MEC-Assisted VR Video Service

arXiv:2104.01036v137 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the challenge of inefficient networking and computing infrastructures for VR services, which is a domain-specific problem for VR and mobile edge computing applications, and is incremental in nature.

The paper tackles the problem of minimizing system latency and energy consumption for wireless multi-tile VR video service over a mobile edge computing network, achieving a trade-off between energy efficiency and latency reduction as demonstrated in simulations.

Virtual reality (VR) is promising to fundamentally transform a broad spectrum of industry sectors and the way humans interact with virtual content. However, despite unprecedented progress, current networking and computing infrastructures are incompetent to unlock VR's full potential. In this paper, we consider delivering the wireless multi-tile VR video service over a mobile edge computing (MEC) network. The primary goal is to minimize the system latency/energy consumption and to arrive at a tradeoff thereof. To this end, we first cast the time-varying view popularity as a model-free Markov chain to effectively capture its dynamic characteristics. After jointly assessing the caching and computing capacities on both the MEC server and the VR playback device, a hybrid policy is then implemented to coordinate the dynamic caching replacement and the deterministic offloading, so as to fully utilize the system resources. The underlying multi-objective problem is reformulated as a partially observable Markov decision process, and a deep deterministic policy gradient algorithm is proposed to iteratively learn its solution, where a long short-term memory neural network is embedded to continuously predict the dynamics of the unobservable popularity. Simulation results demonstrate the superiority of the proposed scheme in achieving a trade-off between the energy efficiency and the latency reduction over the baseline methods.

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