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IFQA: Interpretable Face Quality Assessment

About

Existing face restoration models have relied on general assessment metrics that do not consider the characteristics of facial regions. Recent works have therefore assessed their methods using human studies, which is not scalable and involves significant effort. This paper proposes a novel face-centric metric based on an adversarial framework where a generator simulates face restoration and a discriminator assesses image quality. Specifically, our per-pixel discriminator enables interpretable evaluation that cannot be provided by traditional metrics. Moreover, our metric emphasizes facial primary regions considering that even minor changes to the eyes, nose, and mouth significantly affect human cognition. Our face-oriented metric consistently surpasses existing general or facial image quality assessment metrics by impressive margins. We demonstrate the generalizability of the proposed strategy in various architectural designs and challenging scenarios. Interestingly, we find that our IFQA can lead to performance improvement as an objective function.

Byungho Jo, Donghyeon Cho, In Kyu Park, Sungeun Hong• 2022

Related benchmarks

TaskDatasetResultRank
Face Image Quality AssessmentCGFIQA-40k (test)
PLCC0.9791
37
Face Image Quality AssessmentGFIQA-20k (test)
SRCC0.9603
31
Face Image Quality AssessmentPIQ23 (test)
PLCC0.2907
19
Facial Image Quality AssessmentGFIQA-20K
SRCC0.9514
18
Face Image Quality AssessmentSFIQA-Bench (test)
Noise SRCC0.8626
18
Face Image Quality AssessmentIWF
SRCC0.6988
8
Face Image Quality AssessmentFFHQ and CelebA-HQ (test)
SRCC0.64
8
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