4.7 Article

Face Image Quality Assessment: A Literature Survey

Journal

ACM COMPUTING SURVEYS
Volume 54, Issue 10S, Pages -

Publisher

ASSOC COMPUTING MACHINERY
DOI: 10.1145/3507901

Keywords

Biometric sample quality; face image quality assessment; face recognition

Funding

  1. German Federal Ministry of Education and Research
  2. Hessen State Ministry for Higher Education, Research and the Arts within their joint support of the National Research Center for Applied Cybersecurity ATHENE [RTI2018-101248-B-I00, H2020MSCA-ITN-2019-860813]
  3. European Union [883356]

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This survey provides an overview of the literature on face image quality assessment, focusing on visible wavelength face image input. The trend towards deep learning-based methods is observed, along with the integration of quality assessment into face recognition models. The paper also discusses the various application scenarios for face image quality assessment and highlights open issues and challenges, including the importance of comparability for algorithm evaluations and the need for interpretable deep learning approaches.
The performance of face analysis and recognition systems depends on the quality of the acquired face data, which is influenced by numerous factors. Automatically assessing the quality of face data in terms of biometric utility can thus be useful to detect low-quality data and make decisions accordingly. This survey provides an overview of the face image quality assessment literature, which predominantly focuses on visible wavelength face image input. A trend towards deep learning-based methods is observed, including notable conceptual differences among the recent approaches, such as the integration of quality assessment into face recognition models. Besides image selection, face image quality assessment can also be used in a variety of other application scenarios, which are discussed herein. Open issues and challenges are pointed out, i.a., highlighting the importance of comparability for algorithm evaluations and the challenge for future work to create deep learning approaches that are interpretable in addition to providing accurate utility predictions.

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