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From Patches to Pictures (PaQ-2-PiQ): Mapping the Perceptual Space of Picture Quality
Zhenqiang Ying Haoran Niu Praful Gupta Dhruv Mahajan Deepti Ghadiyaram Alan Bovik

Abstract
Blind or no-reference (NR) perceptual picture quality prediction is a difficult, unsolved problem of great consequence to the social and streaming media industries that impacts billions of viewers daily. Unfortunately, popular NR prediction models perform poorly on real-world distorted pictures. To advance progress on this problem, we introduce the largest (by far) subjective picture quality database, containing about 40000 real-world distorted pictures and 120000 patches, on which we collected about 4M human judgments of picture quality. Using these picture and patch quality labels, we built deep region-based architectures that learn to produce state-of-the-art global picture quality predictions as well as useful local picture quality maps. Our innovations include picture quality prediction architectures that produce global-to-local inferences as well as local-to-global inferences (via feedback).
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| image-quality-assessment-on-msu-nr-vqa | PaQ-2-PiQ | KLCC: 0.7079 PLCC: 0.8549 SRCC: 0.8705 |
| video-quality-assessment-on-msu-sr-qa-dataset | PaQ-2-PiQ | KLCC: 0.57753 PLCC: 0.70988 SROCC: 0.71167 Type: NR |
| video-quality-assessment-on-msu-video-quality | PaQ-2-PiQ | KLCC: 0.7079 PLCC: 0.8549 SRCC: 0.8705 Type: NR |
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