2015
DOI: 10.1117/1.jei.24.6.061208
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No-reference video quality measurement: added value of machine learning

Abstract: Video quality measurement is an important component in the end-to-end video delivery chain. Video quality is, however, subjective, and thus, there will always be interobserver differences in the subjective opinion about the visual quality of the same video. Despite this, most existing works on objective quality measurement typically focus only on predicting a single score and evaluate their prediction accuracies based on how close it is to the mean opinion scores (or similar average based ratings). Clearly, su… Show more

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Cited by 23 publications
(18 citation statements)
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“…Data-driven models hold great promise for the VQA problem [12], [15], [27], [37]- [40]. Netflix recently announced the Video Multimethod Fusion Approach (VMAF), which is an open-source, learning-based FR VQA model.…”
Section: Introductionmentioning
confidence: 99%
“…Data-driven models hold great promise for the VQA problem [12], [15], [27], [37]- [40]. Netflix recently announced the Video Multimethod Fusion Approach (VMAF), which is an open-source, learning-based FR VQA model.…”
Section: Introductionmentioning
confidence: 99%
“…For instance, the authors in [22] proposed the use of SOS (standard deviation of opinion scores) while Ref. [23] suggested using PDU (percentage dissatisfied users) in addition to MOS. Note that measures such as SOS, PDU can be different even if corresponding population MOS are equal.…”
Section: Comparing Groups With Different Variancesmentioning
confidence: 99%
“…2) Objective video quality assessment: For obvious reasons, video quality assessment, is more difficult and more important than image quality assessment [52], [53]. In [54]- [58] we take further our work on images, proposing new no-reference and reduced-reference QoE methods to assess the quality degradation suffered by videos during streaming services. We use various models of artificial neural networks, from restricted Boltzmann machines to deep neural networks, using both unsupervised and supervised learning.…”
Section: B Quality Of Experiencementioning
confidence: 99%