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Journal ArticleDOI

QoE Prediction Model and its Application in Video Quality Adaptation Over UMTS Networks

TLDR
A new content-based, non-intrusive quality of experience (QoE) prediction model for low bitrate and resolution (QCIF) H.264 encoded videos and its application in video quality adaptation over Universal Mobile Telecommunication Systems (UMTS) networks is illustrated.
Abstract
The primary aim of this paper is to present a new content-based, non-intrusive quality of experience (QoE) prediction model for low bitrate and resolution (QCIF) H.264 encoded videos and to illustrate its application in video quality adaptation over Universal Mobile Telecommunication Systems (UMTS) networks. The success of video applications over UMTS networks very much depends on meeting the QoE requirements of users. Thus, it is highly desirable to be able to predict and, if appropriate, to control video quality to meet such QoE requirements. Video quality is affected by distortions caused both by the encoder and the UMTS access network. The impact of these distortions is content dependent, but this feature is not widely used in non-intrusive video quality prediction models. In the new model, we chose four key parameters that can impact video quality and hence the QoE-content type, sender bitrate, block error rate and mean burst length. The video quality was predicted in terms of the mean opinion score (MOS). Subjective quality tests were carried out to develop and evaluate the model. The performance of the model was evaluated with unseen dataset with good prediction accuracy ( ~ 93%). The model also performed well with the LIVE database which was recently made available to the research community. We illustrate the application of the new model in a novel QoE-driven adaptation scheme at the pre-encoding stage in a UMTS network. Simulation results in NS2 demonstrate the effectiveness of the proposed adaptation scheme, especially at the UMTS access network which is a bottleneck. An advantage of the model is that it is light weight (and so it can be implemented for real-time monitoring), and it provides a measure of user-perceived quality, but without requiring time-consuming subjective tests. The model has potential applications in several other areas, including QoE control and optimization in network planning and content provisioning for network/service providers.

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Citations
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Developing a predictive model of quality of experience for internet video

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TL;DR: A comprehensive survey of the evolution of video quality assessment methods, analyzing their characteristics, advantages, and drawbacks and identifying the future research directions of QoE is given.
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Deriving and Validating User Experience Model for DASH Video Streaming

TL;DR: This paper investigates three factors which impact user perceived video quality: initial delay; 2) stall (frame freezing); and 3) bit rate (frame quality) fluctuation, and derives impairment functions which can quantitatively measure the impairment of each factor to formulate an overall user experience model for any DASH video.
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QoE in Video Transmission: A User Experience-Driven Strategy

TL;DR: An overview of selected issues pertaining to QeE and its recent applications in video transmission, with consideration of the compelling features of QoE (i.e., context and human factors).
References
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Journal ArticleDOI

Capacity of a burst-noise channel

TL;DR: The capacity C of the model channel exceeds the capacity C(sym. bin.) of a memoryless symmetric binary channel with the same error probability; however, the difference is slight for some values of h, p, P; then, time-division encoding schemes may be fairly efficient.
Journal ArticleDOI

Study of Subjective and Objective Quality Assessment of Video

TL;DR: A recent large-scale subjective study of video quality on a collection of videos distorted by a variety of application-relevant processes results in a diverse independent public database of distorted videos and subjective scores that is freely available.
ReportDOI

TCP Friendly Rate Control (TFRC): Protocol Specification

TL;DR: TFRC is a congestion control mechanism for unicast flows operating in a best- effort Internet environment that has a much lower variation of throughput over time compared with TCP, making it more suitable for applications such as telephony or streaming media where a relatively smooth sending rate is of importance.
Journal ArticleDOI

Motion Tuned Spatio-Temporal Quality Assessment of Natural Videos

TL;DR: A general, spatio-spectrally localized multiscale framework for evaluating dynamic video fidelity that integrates both spatial and temporal aspects of distortion assessment and is found to be quite competitive with, and even outperform, algorithms developed and submitted to the VQEG FRTV Phase 1 study, as well as more recent VQA algorithms tested on this database.
Journal ArticleDOI

The Evolution of Video Quality Measurement: From PSNR to Hybrid Metrics

TL;DR: The main standardization activities are summarized, such as the work of the video quality experts group (VQEG), and a look at emerging trends in quality measurement, including image preference, visual attention, and audiovisual quality.
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