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DSL-FIQA: Assessing Facial Image Quality via Dual-Set Degradation Learning and Landmark-Guided Transformer

About

Generic Face Image Quality Assessment (GFIQA) evaluates the perceptual quality of facial images, which is crucial in improving image restoration algorithms and selecting high-quality face images for downstream tasks. We present a novel transformer-based method for GFIQA, which is aided by two unique mechanisms. First, a Dual-Set Degradation Representation Learning (DSL) mechanism uses facial images with both synthetic and real degradations to decouple degradation from content, ensuring generalizability to real-world scenarios. This self-supervised method learns degradation features on a global scale, providing a robust alternative to conventional methods that use local patch information in degradation learning. Second, our transformer leverages facial landmarks to emphasize visually salient parts of a face image in evaluating its perceptual quality. We also introduce a balanced and diverse Comprehensive Generic Face IQA (CGFIQA-40k) dataset of 40K images carefully designed to overcome the biases, in particular the imbalances in skin tone and gender representation, in existing datasets. Extensive analysis and evaluation demonstrate the robustness of our method, marking a significant improvement over prior methods.

Wei-Ting Chen, Gurunandan Krishnan, Qiang Gao, Sy-Yen Kuo, Sizhuo Ma, Jian Wang• 2024

Related benchmarks

TaskDatasetResultRank
Face Image Quality AssessmentCGFIQA-40k (test)
PLCC0.9873
37
Face Image Quality AssessmentGFIQA-20k (test)
SRCC0.974
31
Face Image Quality AssessmentPIQ23 (test)
PLCC0.737
19
Face Image Quality AssessmentSFIQA-Bench (test)
Noise SRCC0.9311
18
Facial Image Quality AssessmentGFIQA-20K
SRCC0.9696
18
Facial Image Quality AssessmentSFIQA-Bench
SRCC0.5626
4
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