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Quality-of-Experience Evaluation for Digital Twins in 6G Network Environments | IEEE Journals & Magazine | IEEE Xplore

Quality-of-Experience Evaluation for Digital Twins in 6G Network Environments


Abstract:

As wireless technology continues its rapid evolution, the sixth-generation (6G) networks are capable of offering exceptionally high data transmission rates as well as low...Show More

Abstract:

As wireless technology continues its rapid evolution, the sixth-generation (6G) networks are capable of offering exceptionally high data transmission rates as well as low latency, which is promisingly able to meet the high-demand needs for digital twins (DTs). Quality-of-experience (QoE) in this situation, which refers to the users’ overall satisfaction and perception of the provided DT service in 6G networks, is significant to optimize the service and help improve the users’ experience. Despite progress in developing theories and systems for digital twin transmission under 6G networks, the assessment of QoE for users falls behind. To address this gap, our paper introduces the first QoE evaluation database for human digital twins (HDTs) in 6G network environments, aiming to systematically analyze and quantify the related quality factors. We utilize a mmWave network model for channel capacity simulation and employ high-quality digital humans as source models, which are further animated, encoded, and distorted for final QoE evaluation. Subjective quality ratings are collected from a well-controlled subjective experiment for the 400 generated HDT sequences. Additionally, we propose a novel QoE evaluation metric that considers both quality-of-service (QoS) and content-quality features. Experimental results indicate that our model outperforms existing state-of-the-art QoE evaluation models and other competitive quality assessment models, thus making significant contributions to the domain of 6G network applications for HDTs.
Published in: IEEE Transactions on Broadcasting ( Volume: 70, Issue: 3, September 2024)
Page(s): 995 - 1007
Date of Publication: 05 January 2024

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I. Introduction

As wireless technologies develop at an accelerated pace, including the widespread implementation of the Internet of Things (IoT) [1] and the pervasive deployment of fifth-generation (5G) networks [2], the conceptualization and strategizing for sixth-generation (6G) mobile networks have already been set in motion [3]. It is believed that 6G can offer exceedingly high data transmission rates, which are important for digital twins (DTs) applications [4]. DT represents a cutting-edge concept in the domain of information technology. Essentially, a DT is a highly detailed digital replica or model of a physical object, system, or process, of which human digital twins (HDT) is one of the most popular DT topics and allows users to create an incredibly detailed, dynamic, and personalized model of themselves in digital formats. With an HDT, a person’s virtual representation can interact in a metaverse, just as the real person would do in the physical world, which could make virtual/augmented reality (VR/AR) experiences more immersive and realistic.

Cites in Papers - |

Cites in Papers - IEEE (14)

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Cites in Papers - Other Publishers (1)

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References

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