ML-powered KQI estimation for XR services. A case study on 360-Video
O. S. Pe\~naherrera-Pulla, Carlos Baena, Sergio Fortes and, Raquel Barco

TL;DR
This paper proposes an ML-based framework for estimating key quality indicators of XR services, specifically 360-Video, using only operator-accessible data to enhance privacy and network management.
Contribution
It introduces a novel ML framework for KQI estimation in XR, utilizing feature engineering and hyperparameter tuning, with a case study on 360-Video to demonstrate effectiveness.
Findings
KNR and RF algorithms perform best for KQI prediction.
Feature selection improves model accuracy.
The framework supports privacy-preserving network management.
Abstract
The arise of cutting-edge technologies and services such as XR promise to change the concepts of how day-to-day things are done. At the same time, the appearance of modern and decentralized architectures approaches has given birth to a new generation of mobile networks such as 5G, as well as outlining the roadmap for B5G and posterior. These networks are expected to be the enablers for bringing to life the Metaverse and other futuristic approaches. In this sense, this work presents an ML-based (Machine Learning) framework that allows the estimation of service Key Quality Indicators (KQIs). For this, only information reachable to operators is required, such as statistics and configuration parameters from these networks. This strategy prevents operators from avoiding intrusion into the user data and guaranteeing privacy. To test this proposal, 360-Video has been selected as a use case of…
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Taxonomy
TopicsImage and Video Quality Assessment · Advanced Computing and Algorithms · Telecommunications and Broadcasting Technologies
Methodstravel james · Test · Masked autoencoder · Feature Selection
