2019
DOI: 10.48550/arxiv.1904.01740
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FaceQnet: Quality Assessment for Face Recognition based on Deep Learning

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Cited by 3 publications
(19 citation statements)
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“…Hernandez-Ortega et al created the open source FQAA "FaceQnet" v0 [50] and v1 [42]. As part of the training data preparation for both FaceQnet versions, the BioLab-ICAO framework from [23] is employed to select suitable high-quality images per subject, which are used to compute the ground truth QSs for the subjects' remaining training images.…”
Section: DL Fqa Literaturementioning
confidence: 99%
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“…Hernandez-Ortega et al created the open source FQAA "FaceQnet" v0 [50] and v1 [42]. As part of the training data preparation for both FaceQnet versions, the BioLab-ICAO framework from [23] is employed to select suitable high-quality images per subject, which are used to compute the ground truth QSs for the subjects' remaining training images.…”
Section: DL Fqa Literaturementioning
confidence: 99%
“…Removing that, the first and last layer of the network have the same dimensions as the FR embedding. Evaluations used FaceNet [119] and ArcFace [123] for FR, and selected images using QSs from both SER-FIQ variants, FaceQnet v0 [50], an approach proposed by Best-Rowden in [109], 3 general IQAAs (BRISQUE [113], NIQE [124], PIQE [125]), as well as a COTS (Neurotec Biometric SDK 11.1 [111]). The SER-FIQ "on-top model" was noted to mostly outperform all baseline approaches, and to always deliver close to top performance.…”
Section: DL Fqa Literaturementioning
confidence: 99%
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