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RankDVQA: Deep VQA based on Ranking-inspired Hybrid Training

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In recent years, deep learning techniques have shown significant potential for improving video quality assessment (VQA), achieving higher correlation with subjective opinions compared to conventional approaches. However, the development of deep VQA methods has been constrained by the limited availability of large-scale training databases and ineffective training methodologies. As a result, it is difficult for deep VQA approaches to achieve consistently superior performance and model generalization. In this context, this paper proposes new VQA methods based on a two-stage training methodology which motivates us to develop a large-scale VQA training database without employing human subjects to provide ground truth labels. This method was used to train a new transformer-based network architecture, exploiting quality ranking of different distorted sequences rather than minimizing the difference from the ground-truth quality labels. The resulting deep VQA methods (for both full reference and no reference scenarios), FR- and NR-RankDVQA, exhibit consistently higher correlation with perceptual quality compared to the state-of-the-art conventional and deep VQA methods, with average SROCC values of 0.8972 (FR) and 0.7791 (NR) over eight test sets without performing cross-validation. The source code of the proposed quality metrics and the large training database are available at https://chenfeng-bristol.github.io/RankDVQA.

Chen Feng, Duolikun Danier, Fan Zhang, David Bull• 2022

Related benchmarks

TaskDatasetResultRank
Blind Video Quality AssessmentWaterloo-IVC-4K
SRCC0.6501
46
Video Quality AssessmentDCVQA
PLCC0.8491
11
Video Quality AssessmentAVT-VQDB UHD 1
PLCC93.05
11
Video Quality AssessmentMCML 4K
PLCC0.9186
11
Video Quality AssessmentBVI-HD
PLCC0.7539
11
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