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A new methodology to estimate the impact of H.264 artefacts on subjective video quality Stéphane Péchard, Patrick Le Callet, Mathieu Carnec, Dominique Barba Université de Nantes – IRCCyN laboratory – IVC team Polytech’Nantes, rue Christian Pauc, 44306 Nantes, France Third International Workshop on Video Processing and Quality Metrics for Consumer Electronics Scottsdale, 2007-01-26
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A new methodology to estimate the impact of H.264 artefacts on subjective video quality

May 17, 2015

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Presentation of my scientific paper to the Third International Workshop on Video Processing and Quality Metrics (VPQM2007).
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Page 1: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

A new methodology to estimate the impact of H.264 artefacts on

subjective video quality

Stéphane Péchard, Patrick Le Callet, Mathieu Carnec, Dominique Barba

Université de Nantes – IRCCyN laboratory – IVC teamPolytech’Nantes, rue Christian Pauc, 44306 Nantes, France

Third International Workshop on Video Processing and Quality Metrics for Consumer ElectronicsScottsdale, 2007-01-26

Page 2: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

2

Introduction

• Codec => Coding artefacts

• Quality loss due to artefacts

=> Useful for quality metrics or better coding …

• Possible practical approach– Artefact classification– Annoyance or quality loss contribution per artefact type

Page 3: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

3

Farias and al. methodology Farias VPQM 05

• Artefacts type set (blockiness, blur, ringing, …)• Generation of synthetic artefacts

– Strength parameter– Applied with the same strength on a whole part of the

sequence• Subjective assessment => Annoyance curve per artefact type regarding the

strength => Content dependency

Alternative approach : VPQM07⇒ H.264 coding, Subjective assessment : quality scale, blur

scale, blockiness scale …⇒ No direct control of artefacts strength

Page 4: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

4

Proposed approach

• H.264 artefacts due to quantization/decision • effects are different regarding the local content

(edge, texture, …)• different perceived annoyance depending on the

local spatio-temporal activity of the content

• H264 distortions only in selected coherent spatio-temporal regions => define content categories

• Subjective quality assessment⇒ Quality loss curve per local content category

(e.g. effects of H264 on each category)

⇒ Strength ?

Page 5: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

5

Outline

• Spatio temporal segmentation • distorted sequences generation• subjective quality assessment of sequences• Quality assessment : Combining categories• Towards quality loss function per content

category

Page 6: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

6

The approach

temporalsegmentation classification

H.264 codingC-distortedsequencesgeneration

unlabeledholes filling

bordersprocessing

source

categories masks sequence

partly-distorted sequencesusable for subjective tests

Ci

……

Page 7: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

7

Spatio temporal classification

2 steps

- temporal segmentation :reliability regarding the motion => temporal tubes

- tube classification :Regarding spatial content

Page 8: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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Segmentation of sequences

temporalsegmentation classification

H.264 codingClass-distorted

sequencesgeneration

unlabeledholes filling

bordersprocessing

source

partly-distorted sequencesusable for subjective tests

Ci

……

Page 9: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

9

Segmentation of sequences

• per group of five successive frame, the center frame is divided into blocks

• motion estimation of each block using the two previous frames and the two next frames

(motion estimation performed on a multi-resolution representation)

i+1 i+2i-1 ii-2

Page 10: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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Segmentation of sequences

• temporal tracking of each block of frame i defines a spatio-temporal “tube” over the five frames

• a tube is oriented along the local motion

i+1 i+2i-1 ii-2

Page 11: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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Classification

temporalsegmentation classification

H.264 codingC-distortedsequencesgeneration

unlabeledholes filling

bordersprocessing

source

partly-distorted sequencesusable for subjective tests

Ci

……

Page 12: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

12

Definition of content categories

• low luminance smooth areas;• high luminance smooth areas;• fine textured areas;• edges;• strong textured areas

HVS has different perception of impairments depending on the local spatio-temporal content.

Page 13: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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Classification

• 4 spatial gradients means per tube (directions : 0, 90, 45 and 135°)

• plot in spatial space P (0 and 90°) => C1, C2, C3 and C4

• 2nd step : space P’ (45 and 135°) used to discriminate C5 in P

• frontier determined to obtain relevant classification

Page 14: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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Classification

• global tracking of moving objects over the whole sequence

• tubes are classified then merged by categories

smooth areas with low luminancesmooth areas with high luminancefine textured areasedgesstrong textured areas

Page 15: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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Unlabeled holes filling and tube intersections

temporalsegmentation classification

H.264 codingC-distortedsequencesgeneration

unlabeledholes filling

bordersprocessing

source

partly-distorted sequencesusable for subjective tests

Ci

……

Page 16: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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Unlabeled holes filling and tube intersection

• every pixel of the source has one and only one label• unlabeled holes :

– gradient value => class– closest tube

• Insection pixels : same

Page 17: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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Borders processing

temporalsegmentation classification

H.264 codingC-distortedsequencesgeneration

unlabeledholes filling

bordersprocessing

source

partly-distorted sequencesusable for subjective tests

Ci

……

Page 18: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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Borders processing

• borders between original and distorted large regions are treated so as to smooth the transitions

beforeborders

processing

afterbordersprocessing

Page 19: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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H.264 coding and class-distorted sequences generation

temporalsegmentation classification

H.264 codingC-distortedsequencesgeneration

unlabeledholes filling

bordersprocessing

source

category masks sequence

partly-distorted sequencesusable for subjective tests

Ci

……

Page 20: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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Partly-distorted sequences generation

H.264 sequences at different bitrates

categories sequence

original sequence C1

C2

C3

C4

C5

5 sequences per bitrate

Page 21: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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Original sequence (first frame)

Page 22: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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One caregory distorted sequence (first frame)

Page 23: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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Subjective quality assessment

• SAMVIQ protocol with at least 15 validated observers and normalized conditions

• 1920x1080 HDTV Philips LCD display

• Doremi V1-UHD 1080i HDTV player

Page 24: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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Subjective quality assessment

• 11 sequences in a SAMVIQ session:– 5 Ci-only distorted at a certain bitrate B

– entirely distorted sequence at B– entirely distorted sequence at low bitrate– entirely distorted sequence at intermediate

bitrate– explicit and hidden references

Page 25: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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Sequences uncompressed HDTV sequences from SVT

Above marathon Captain Dance in the woods Duck fly

C5 50 % C2 78 % C3 54 % C5 60 %

Fountain man Group disorder Rendezvous Ulriksdals

C2 71 % C2+C3+C1 95 % C5 56 % C2+C3 80 %

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example on sequence Ulriksdalscoded at 1 Mbps

0

10

20

30

40

50

60

70

80

90

1 2 3 4 5

Classes MOS(Sj,Bk) MOSref

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• ∆MOS(Ci, Sj ,Bk) = MOSref - MOS(Ci, Sj ,Bk) is the quality loss induced by distortions in category Ci

∆MOS(C4)

∆MOS(C5)

∆MOS(C3)

∆MOS(C1)

∆MOS(C2)

MOSref

MOS(Sj,Bk)

DMOS(Sj,Bk)

MOS(C4)

MOS(C5)

MOS(C3)MOS(C1)

MOS(C2)

• MOS(Ci, Sj ,Bk) for each sequence Sj, each category Ci at each bitrate Bk

• DMOS(Sj ,Bk) = MOSref – MOS(Sj ,Bk) is the quality difference between the reference and the entirely distorted sequence

DMOS and ∆MOS

Page 28: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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• relations use sums of ∆MOS

0.5472∆MOS(C4)

0.7664∆MOS(C2)

0.7094∆MOS(C3)

0.6400∆MOS(C5)

……

0.5349∆MOS(C1)

0.9058∆MOS(C1) + ∆MOS(C2) + ∆MOS(C3)

+ ∆MOS(C4) + ∆MOS(C5)

0.9094∆MOS(C2) + ∆MOS(C3) + ∆MOS(C4)0.9440∆MOS(C2) + ∆MOS(C5)0.9485∆MOS(C2)+ ∆MOS(C4) + ∆MOS(C5)

CCCombination

Possible relation between global DMOS and category ∆MOS?

Page 29: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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Non linear functions

• DMOSp = maxi(∆MOSi)

– CC = 0.9467• DMOSp = maxi(∆MOSi) + maxj(∆MOSj) with j≠i

– CC = 0.9530

• Correlation exists between global DMOS and category ∆MOS=> DMOS could be predicted from quality per

category

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Towards a quality loss model

• How to control the distortion level of a given class ?– Farias approach :strength of synthetic artefact

• Factors implied in the quality loss of category Ci:– distortions themselves– motion– proportion of the category– spatial localisation (not considered here)

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Distortion strength for category C1

• distortion strength = f(M,P,E)With all along the sequence :– M the mean motion of the category;– P the mean proportion of the category;– E the MSE on the category;

• M decreases the distortion strength while P and E increase DSproposed model for f

DS = (1 — M/Mt)×P×E

Page 32: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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Quality loss function for category C1

• Psychometic function as a prediction of ∆MOS1

φ(DS) = (a×DSb)/(c+DSb)

• correlation between φ(DS) and ∆MOS1 : 0.9514

• RMSE = 5.25• good predictor of the loss of quality induced by

category C1

Page 33: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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Quality loss function for class C1

=> Possible prediction of ∆MOS1

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Conclusion

• design of a new methodology to estimate the impact of H.264 artefacts on subjective video quality

• One distortion type but– Effect related to local content– possibility to relate the global loss to loss per

category– quality loss function for category C1

• Other categories and objective models

Page 35: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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Results: segmentation statistics

60.7016.750.3650.06C5 (%)

10.703.021.430.94C4 (%)

19.5053.856.8127.79C3 (%)

8.9722.5778.2617.45C2 (%)

0.133.8013.143.75C1 (%)

Duck flyDance in the woodsCaptainAbove marathon

Séquence

Page 36: A new methodology to estimate the impact of H.264 artefacts on subjective video quality

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Results: segmentation statistics

3.3056.924.543.93C5 (%)

1.362.051.791.45C4 (%)

40.4819.8729.8013.37C3 (%)

41.3112.3838.5870.71C2 (%)

13.548.7825.2810.52C1 (%)

UlriksdalsRendezvousGroup disorderFountain man

Séquence