Affiliation:
1. Politecnico di Torino, Torino, Italy
2. University of Zilina, Zilina, Slovakia
3. Deggendorf Institute of Technology, University of Applied Sciences, Deggendorf, Germany
Abstract
The media quality assessment research community has traditionally been focusing on developing objective algorithms to predict the result of a typical subjective experiment in terms of
Mean Opinion Score (MOS)
value. However, the MOS, being a single value, is insufficient to model the complexity and diversity of human opinions encountered in an actual subjective experiment. In this work we propose a complementary approach for objective media quality assessment that attempts to more closely model what happens in a subjective experiment in terms of single observers and, at the same time, we perform a qualitative analysis of the proposed approach while highlighting its suitability. More precisely, we propose to model, using
neural networks (NNs)
, the way single observers perceive media quality. Once trained, these NNs, one for each observer, are expected to mimic the corresponding observer in terms of quality perception. Then, similarly to a subjective experiment, such NNs can be used to simulate the users’ single opinions, which can be later aggregated by means of different statistical indicators such as average, standard deviation, quantiles, etc. Unlike previous approaches that consider subjective experiments as a black box providing reliable ground truth data for training, the proposed approach is able to consider human factors by analyzing and weighting individual observers. Such a model may therefore implicitly account for users’ expectations and tendencies, that have been shown in many studies to significantly correlate with visual quality perception. Furthermore, our proposal also introduces and investigates an index measuring how much inconsistency there would be if an observer was asked to rate many times the same stimulus. Simulation experiments conducted on several datasets demonstrate that the proposed approach can be effectively implemented in practice and thus yielding a more complete objective assessment of end users’ quality of experience.
Publisher
Association for Computing Machinery (ACM)
Subject
Computer Networks and Communications,Hardware and Architecture
Reference58 articles.
1. Spatiotemporal Feature Integration and Model Fusion for Full Reference Video Quality Assessment
2. Objective Video Quality Assessment — Towards Large Scale Video Database Enhanced Model Development
3. Efficiency of the Ishihara test for identifying red-green colour deficiency
4. Kjell Brunnström et al. 2012. Qualinet white paper on definitions of Quality of Experience. (2012). European Network on Quality of Experience in Multimedia Systems and Services (COST Action IC 1003).
5. ITU-R Rec. BT.500-11. 2002. Methodology for the subjective assessment of the quality of television pictures. (June 2002).
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