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Journal ArticleDOI

Discrete quality assessment in IPTV content distribution networks

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TLDR
The proposed DEQA framework enables a real-time, non-intrusive assessment service by efficiently recognising and assessing individual quality violation events in the IPTV distribution network and also facilitates efficient network diagnosis and QoE management.
Abstract
Maintaining the quality of videos in resource-intensive IPTV services is challenging due to the nature of packet-based content distribution networks (CDN). Network impairments are unpredictable and highly detrimental to the quality of video content. Quality of the end user experience (QoE) has become a critical service differentiator. An efficient real-time quality assessment service in distribution networks is the foundation of service quality monitoring and management. The perceptual impact of individual impairments varies significantly and is influenced by complex impact factors. Without differentiating the impact of quality violation events to the user experience, existing assessment methodologies based on network QoS such as packet loss rate cannot provide adequate supports for the IPTV service assessment. A discrete perceptual impact evaluation quality assessment (DEQA) framework is introduced in this paper. The proposed framework enables a real-time, non-intrusive assessment service by efficiently recognising and assessing individual quality violation events in the IPTV distribution network. The discrete perceptual impacts to a media session are aggregated for the overall user level quality evaluation. With its deployment scheme the DEQA framework also facilitates efficient network diagnosis and QoE management. To realise the key assessment function of the framework and investigate the proposed advanced packet inspection mechanism, we also introduce the dedicated evaluation testbed—the LA2 system. A subjective experiment with data analysis is also presented to demonstrate the development of perceptual impact assessment functions using analytical inference, the tools of the LA2 system, subjective user tests and statistical modelling.

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Citations
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Journal ArticleDOI

Framework for the integrated video quality assessment

TL;DR: This paper designs an integrated framework using a number of comprehensive functional modules that integrates objective quality assessment models of Artifacts Measurement and Quality of Delivery approaches and introduces the recent work of realising key functional modules of the framework.
Journal ArticleDOI

A Scalable User Fairness Model for Adaptive Video Streaming Over SDN-Assisted Future Networks

TL;DR: A novel user-level fairness model UFair and its hierarchical variant UFairHA are introduced, which orchestrate HAS media streams using emerging network architectures and incorporate three fairness metrics (video quality, switching impact, and cost efficiency) to achieve user- level fairness in video distribution.
Book ChapterDOI

Quality evaluation in peer-to-peer IPTV services

TL;DR: This work introduces an evaluation framework to assess video service with respect of user perception, while supporting service diagnosis to identify root-causes of any detected quality degradation.
Journal ArticleDOI

P2P-Based IPTV Services: Design, Deployment, and QoE Measurement

TL;DR: A multimodal QoE measurement framework which evaluates the IPTV services by collaborating measurements with a variety of different aspects is presented and results of a use case are described to verify the effectiveness of the measurement framework in exploiting relevant metrics from service components.
Proceedings ArticleDOI

Statistical analysis of ordinal user opinion scores

TL;DR: This paper verifies that non-normally distributed user opinion scores in nominal or ordinal responses should not be analysed using parametric statistics, and introduces a number of non-parametric statistics for valid model building and parameter estimation based onuser opinion scores.
References
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