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Quality-aware Pre-trained Models for Blind Image Quality Assessment

About

Blind image quality assessment (BIQA) aims to automatically evaluate the perceived quality of a single image, whose performance has been improved by deep learning-based methods in recent years. However, the paucity of labeled data somewhat restrains deep learning-based BIQA methods from unleashing their full potential. In this paper, we propose to solve the problem by a pretext task customized for BIQA in a self-supervised learning manner, which enables learning representations from orders of magnitude more data. To constrain the learning process, we propose a quality-aware contrastive loss based on a simple assumption: the quality of patches from a distorted image should be similar, but vary from patches from the same image with different degradations and patches from different images. Further, we improve the existing degradation process and form a degradation space with the size of roughly $2\times10^7$. After pre-trained on ImageNet using our method, models are more sensitive to image quality and perform significantly better on downstream BIQA tasks. Experimental results show that our method obtains remarkable improvements on popular BIQA datasets.

Kai Zhao, Kun Yuan, Ming Sun, Mading Li, Xing Wen• 2023

Related benchmarks

TaskDatasetResultRank
Image Quality AssessmentSPAQ
SRCC0.925
191
Image Quality AssessmentKonIQ-10k (test)
SRCC0.7494
91
Blind Image Quality AssessmentFLIVE
SRCC0.6104
86
No-Reference Image Quality AssessmentKonIQ-10k
SROCC0.9271
73
Blind Image Quality AssessmentLIVEC
SRCC0.895
65
Blind Image Quality AssessmentCLIVE
SRCC0.8947
48
No-Reference Image Quality AssessmentSPAQ
SROCC0.925
48
Blind Image Quality AssessmentBID
SRCC0.888
46
No-Reference Image Quality AssessmentLIVEFB
PLCC0.675
42
Blind Image Quality AssessmentBID (test)
SRCC0.8449
17
Showing 10 of 13 rows

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