Measuring Perceptual Video Quality at Scale
Fiche de lecture : Measuring Perceptual Video Quality at Scale. Recherche parmi 300 000+ dissertationsPar johnnypearson • 8 Septembre 2020 • Fiche de lecture • 720 Mots (3 Pages) • 488 Vues
MEASURING PERCEPTUAL VIDEO
QUALITY AT SCALE
Encoding pipeline with automated quality monitoring
Evaluate state-of-the-art video compression formats
Optimize encoding recipes and algorithms
Experiment and test on subset of titles
Deploy and run A/B tests
Participate in next-generation codec development
The best video quality possible.
Ways to measure quality
subjectivetest.png
Visual Testing
Tek-pqa600a_01a_h_2.jpg
Video Analyzers
PSNR, SSIM, etc.
HEVCperformance.png
[Ohm, et al., 2012]
Comparative measure;
The PSNR block computes the peak signal-to-noise ratio, in decibels, between two images;
Higher the PSNR, the better the quality of the compressed, or reconstructed image;
8 bits =-48dB / 16 bits =-95dB
255 (8-bit representation), value of PSNR = 20*log(255) = 48dB.
PSNR=10log10(R2/ MSE)
Ris the maximum fluctuation in the input image data type
MSE represents the cumulative squared error between the compressed and the original image
Peak signal-to-noise ratio
IMAGE DATA COMPRESSION INFORMATIONAL REPORT CCSDS 120.1-G-1
Comparative measure;
MSE (or RMSE) is a frequently used measure of the difference between values predicted by a model
and the values observed;
Mean squared error
MSE= 1nΣi=1nSi−Oi2
Oiare the references,Sipredicted values of a variable, andnthe number of observations available for analysis
Bruno Aiazzi, Stefano Baronti ,Massimo Selva. Image Fusion., Algorithms and Applications 2008,
Pages 27-66
A perceptual metric that quantifies image quality
degradation;
SSIM measures the perceptualdifference
Between two similar images;
UnlikePSNR (Peak Signal-to-Noise Ratio), SSIM is
based on visible structures in the image.
Structural similarity -SSIM
http://www.imatest.com/docs/ssim/
Is a Global multiscale extension of SSIM;
Multi-ScaleStructural Similarity Index Measurement MS-SSIM
A close up of a flower
Description automatically generated
Screen Shot 2016-10-08 at 7.28.42 PM.png
PSNR 29.1 dB
Screen Shot 2016-10-08 at 7.28.26 PM.png
PSNR 29.3 dB
Screen Shot 2016-10-08 at 7.49.38 PM.png
PSNR 32.9 dB
Screen Shot 2016-10-08 at 7.51.07 PM.png
PSNR 37.3 dB
Design a video quality metric
●Accurately captures human perception of quality
●Consistent across titles
●Can be run at scale
●For our use case
○Compression artifacts
○Scaling artifacts
What is VMAF?
Video Multimethod Assessment Fusion
Full reference video quality metric
Combines multiple elementary quality metrics
Machine-learning regression to predict a final “fused” score
vmafdiagram.png
Visual Information Fidelity
H. Sheikh and A. Bovik, “Image Information and
Visual Quality,” IEEE Transactions on Image
Processing, vol. 15, no. 2, pp. 430–444, Feb. 2006.
Detail Loss Measure
S. Li, F. Zhang, L. Ma, and K. Ngan, “Image Quality
Assessment by Separately Evaluating Detail Losses
and
...