4.6 Article

Face Recognition Bias Assessment through Quality Estimation Models

Journal

ELECTRONICS
Volume 12, Issue 22, Pages -

Publisher

MDPI
DOI: 10.3390/electronics12224649

Keywords

quality; bias; face recognition; deep learning

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This paper reviews and analyzes the biases in facial recognition quality estimation techniques, and experiments on several quality estimators are conducted. The research findings help identify biases within facial recognition models.
Recent advances in facial recognition technology have achieved outstanding performance, but unconstrained face recognition remains an ongoing issue. Facial-image-quality-evaluation algorithms evaluate the quality of the input samples, providing crucial information about the accuracy of recognition decisions. By doing so, this can lead to improved results in challenging scenarios. In recent years, significant progress has been made in assessing the quality of facial images. The computation of quality scores has become highly precise and closely correlated with the model results. In this paper, we reviewed and analyzed the existing biases of cutting-edge quality-estimation techniques for face recognition. Our experimentation focused on the quality estimators developed by MagFace, FaceQNet, and SER-FIQ and were evaluated on the CelebA reference dataset. A study of bias in the face-recognition model was conducted by analyzing the quality scores presented in each article. This allowed for an examination of existing biases within both the quality estimators and the face-recognition models.

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