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Video Quality Assessment
Video Quality Assessment On Msu Video Quality
Video Quality Assessment On Msu Video Quality
Metrics
KLCC
PLCC
SRCC
Type
Results
Performance results of various models on this benchmark
Columns
Model Name
KLCC
PLCC
SRCC
Type
Paper Title
Repository
LI
0.7640
0.9270
0.9131
NR
Blindly Assess Quality of In-the-Wild Videos via Quality-aware Pre-training and Motion Perception
DOVER
0.7216
0.9099
0.8871
NR
Exploring Video Quality Assessment on User Generated Contents from Aesthetic and Technical Perspectives
NIMA
0.6745
0.8784
0.8494
NR
NIMA: Neural Image Assessment
SPAQ MT-S
0.7186
0.8814
0.8822
NR
Perceptual Quality Assessment of Smartphone Photography
VIDEVAL
0.5414
0.7717
0.7286
NR
UGC-VQA: Benchmarking Blind Video Quality Assessment for User Generated Content
FASTER-VQA
0.5645
0.8087
0.7508
NR
FAST-VQA: Efficient End-to-end Video Quality Assessment with Fragment Sampling
FAST-VQA
0.6498
0.8613
0.8308
NR
FAST-VQA: Efficient End-to-end Video Quality Assessment with Fragment Sampling
Y-NIQE
0.4215
0.6713
0.5985
NR
Barriers towards no-reference metrics application to compressed video quality analysis: on the example of no-reference metric NIQE
-
MDTVSFA
0.7883
0.9431
0.9289
NR
Unified Quality Assessment of In-the-Wild Videos with Mixed Datasets Training
GVSP-UGCVQA-NR (multi_scale)
0.6942
0.8851
0.8673
NR
Deep Learning based Full-reference and No-reference Quality Assessment Models for Compressed UGC Videos
PaQ-2-PiQ
0.7079
0.8549
0.8705
NR
From Patches to Pictures (PaQ-2-PiQ): Mapping the Perceptual Space of Picture Quality
VSFA
0.7483
0.9180
0.9049
NR
Quality Assessment of In-the-Wild Videos
MEON
0.3775
0.2898
0.5066
NR
-
-
KonCept512
0.6608
0.8464
0.8360
NR
KonIQ-10k: An ecologically valid database for deep learning of blind image quality assessment
MUSIQ
0.7433
0.9068
0.9004
NR
MUSIQ: Multi-scale Image Quality Transformer
SPAQ MT-A
0.7148
0.8824
0.8794
NR
Perceptual Quality Assessment of Smartphone Photography
UNIQUE
0.7648
0.9238
0.9148
NR
UNIQUE: Unsupervised Image Quality Estimation
DBCNN
0.7750
0.9222
0.9220
NR
Blind Image Quality Assessment Using A Deep Bilinear Convolutional Neural Network
LINEARITY
0.7589
0.9106
0.9104
NR
Norm-in-Norm Loss with Faster Convergence and Better Performance for Image Quality Assessment
GVSP-UGCVQA-NR (single_scale)
0.7037
0.8933
0.8742
NR
Deep Learning based Full-reference and No-reference Quality Assessment Models for Compressed UGC Videos
0 of 21 row(s) selected.
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