Asynchronous Hybrid Reinforcement Learning for Latency and Reliability Optimization in the Metaverse over Wireless Communications
Wenhan Yu, Terence Jie Chua, Jun Zhao

TL;DR
This paper introduces an asynchronous hybrid reinforcement learning algorithm, AAHC, to optimize latency and reliability in wireless communications for Metaverse applications, addressing asymmetric data transmission challenges.
Contribution
The paper proposes a novel multi-agent reinforcement learning framework, AAHC, for joint optimization of offloading, channel, and power decisions in Metaverse wireless systems.
Findings
AAHC outperforms baseline algorithms in solution quality.
AAHC achieves faster training convergence.
Enhanced system reliability and reduced latency in Metaverse communications.
Abstract
Technology advancements in wireless communications and high-performance Extended Reality (XR) have empowered the developments of the Metaverse. The demand for the Metaverse applications and hence, real-time digital twinning of real-world scenes is increasing. Nevertheless, the replication of 2D physical world images into 3D virtual objects is computationally intensive and requires computation offloading. The disparity in transmitted object dimension (2D as opposed to 3D) leads to asymmetric data sizes in uplink (UL) and downlink (DL). To ensure the reliability and low latency of the system, we consider an asynchronous joint UL-DL scenario where in the UL stage, the smaller data size of the physical world images captured by multiple extended reality users (XUs) will be uploaded to the Metaverse Console (MC) to be construed and rendered. In the DL stage, the larger-size 3D virtual objects…
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Taxonomy
TopicsTelecommunications and Broadcasting Technologies · Image and Video Quality Assessment
