Machine Learning--Based Parametric Audiovisual Quality Prediction Models for Real-Time Communications

Volume: 13, Issue: 2, Pages: 1 - 25
Published: Mar 15, 2017
Abstract
In order to mechanically predict audiovisual quality in interactive multimedia services, we have developed machine learning--based no-reference parametric models. We have compared Decision Trees--based ensemble methods, Genetic Programming and Deep Learning models that have one and more hidden layers. We have used the Institut national de la recherche scientifique (INRS) audiovisual quality dataset specifically designed to include ranges of...
Paper Details
Title
Machine Learning--Based Parametric Audiovisual Quality Prediction Models for Real-Time Communications
Published Date
Mar 15, 2017
Volume
13
Issue
2
Pages
1 - 25
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