Technology advancements in wireless communications and high-performance Extended Reality (XR) have empowered the developments of the Metaverse. The demand for 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 world scenes is computationally intensive and requires computation offloading. The disparity in transmitted scene 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 scenes 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 world scenes need to be transmitted back to the XUs. The decisions pertaining to computation offloading and channel assignment are optimized in the UL stage, and the MC will optimize power allocation for users assigned with a channel in the UL transmission stage. Some problems arise therefrom: (i) interactive multi-process chain, specifically Asynchronous Markov Decision Process (AMDP), (ii) joint optimization in multiple processes, and (iii) high-dimensional objective functions, or hybrid reward scenarios. To ensure the reliability and low latency of the system, we design a novel multi-agent reinforcement learning algorithm structure, namely Asynchronous Actors Hybrid Critic (AAHC). Extensive experiments demonstrate that compared to proposed baselines, AAHC obtains better solutions with preferable training time.
翻译:无线通信和高性能扩展现实(XR)技术的进步增强了Meteval的发展。对Meteval应用程序的需求正在增加,因此,实时数字对真实世界场景的数字化配对需求正在增加。然而,将2D物理世界图像复制到3D虚拟世界场景的复制量是计算密集的,需要计算卸载。传输场景层面的差别(2D相对于3D)导致上行(UL)和下行(DL)数据大小不对称。为确保系统的可靠性和低水平,我们认为对Meteval应用的不同步联合 UL-DL假设情景,在UL阶段,由多个扩展的现实用户所捕捉到的世界物理场景的较小数据规模将上传给Metverse Console(MC)进行解读和转换。在DL阶段,较大规模的3D虚拟世界场景需要回传回XUUUU。关于计算下流值和频道任务的决定在UL阶段得到优化,而MC系统将优化CL-Rional Ral Ral 配置,具体地将A-dealliver A-deal liver lieval listration Acal listration Acal listal listration (A) acal listal listrual liction liction liction) a listal liction liction liction liction Acal liction liction liction press press lictions) a liction Acildentalctions