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

机译:基于机器学习的实时通信参数视听质量预测模型

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摘要

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 parameters and degradations typically seen in real-time communications. Decision Trees-based ensemble methods have outperformed both Deep Learning- and Genetic Programming-based models in terms of Root-Mean-Square Error (RMSE) and Pearson correlation values. We have also trained and developed models on various publicly available datasets and have compared our results with those of these original models. Our studies show that Random Forests-based prediction models achieve high accuracy for both the INRS audiovisual quality dataset and other publicly available comparable datasets.
机译:为了机械地预测交互式多媒体服务中的视听质量,我们开发了基于机器学习的无参考参数模型。我们比较了基于决策树的集成方法,遗传编程和深度学习模型,这些方法具有一个或多个隐藏层。我们使用了国家科学研究所(INRS)视听质量数据集,该数据集专门设计用于包括通常在实时通信中看到的参数范围和降级范围。基于决策树的集成方法在均方根误差(RMSE)和Pearson相关值方面均优于基于深度学习和基于遗传编程的模型。我们还在各种公开可用的数据集上训练和开发了模型,并将我们的结果与这些原始模型的结果进行了比较。我们的研究表明,基于随机森林的预测模型对于INRS视听质量数据集和其他可公开获得的可比较数据集均具有很高的准确性。

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