Deep Priors for Video Quality Prediction
Siddharath Narayan Shakya, Parimala Kancharla

TL;DR
This paper introduces a blind video quality assessment method leveraging deep video prior, which estimates distortion by restoring videos and measuring restoration quality without labeled data.
Contribution
It proposes a novel unsupervised approach using deep video prior for video quality assessment, eliminating the need for labeled datasets.
Findings
Outperforms existing unsupervised methods in correlation metrics
Uses a single distorted and reference video pair for training
Effective on synthetically distorted video datasets
Abstract
In this work, we designed a completely blind video quality assessment algorithm using the deep video prior. This work mainly explores the utility of deep video prior in estimating the visual quality of the video. In our work, we have used a single distorted video and a reference video pair to learn the deep video prior. At inference time, the learned deep prior is used to restore the original videos from the distorted videos. The ability of learned deep video prior to restore the original video from the distorted video is measured to quantify distortion in the video. Our hypothesis is that the learned deep video prior fails in restoring the highly distorted videos. The restoring ability of deep video prior is proportional to the distortion present in the video. Therefore, we propose to use the distance between the distorted video and the restored video as the perceptual quality of the…
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Taxonomy
TopicsImage and Video Quality Assessment · Advanced Image Processing Techniques · Image and Signal Denoising Methods
MethodsLipschitz Constant Constraint
