Title
Machine learning and statistical methods for multimedia QoE measurement and enhancement
Organizers
Tiago H. Falk, Zhi Li, and Lucjan Janowski
Motivation and objectives
It is without a doubt that data‐driven machine learning methods, in particular deep neural networks, have revolutionized numerous multimedia applications, including speech recognition and image/video-based object recognition, to name a few. Recently, efforts have emerged that explore the use deep neural networks for multimedia enhancement, blind source separation, room acoustics characterization, context‐awareness, and objective quality and quality‐of‐experience prediction. Recent challenges, however, suggest that there is still ample room for improvement, particularly within the domain of multimedia enhancement and quality assessment, as DNN‐enhanced signals have unusual distortions that existing metrics are not able to model well.
Topics of interest
Topics of Interest (not limited to):
- Machine‐learning based multimedia signal enhancement (e.g., audio, video, image)
- Machine‐learning based source separation
- Data‐driven objective multimedia quality metrics
- Machine learning and statistical methods for QoE modeling
- Statistical methods for quality measurement and prediction
- Data‐driven influential factor modeling for QoE
- Characterizing distortions in DNN‐based methods
- Machine learning and statistical methods for subjective QoE assessment