TL;DR
MAAD-Face is a large, high-quality attribute dataset built on VGGFace2, offering extensive annotations that enhance research in face biometrics and soft-biometrics analysis.
Contribution
It introduces MAAD-Face, a novel large-scale face attribute dataset with high-quality annotations transferred via a new pipeline, surpassing existing datasets in size and accuracy.
Findings
MAAD-Face contains 123.9 million attribute annotations.
Annotations are verified to be superior in quality to existing datasets.
The dataset enables new insights into the use of soft-biometrics for face recognition.
Abstract
Soft-biometrics play an important role in face biometrics and related fields since these might lead to biased performances, threatens the user's privacy, or are valuable for commercial aspects. Current face databases are specifically constructed for the development of face recognition applications. Consequently, these databases contain large amount of face images but lack in the number of attribute annotations and the overall annotation correctness. In this work, we propose MAADFace, a new face annotations database that is characterized by the large number of its high-quality attribute annotations. MAADFace is build on the VGGFace2 database and thus, consists of 3.3M faces of over 9k individuals. Using a novel annotation transfer-pipeline that allows an accurate label-transfer from multiple source-datasets to a target-dataset, MAAD-Face consists of 123.9M attribute annotations of 47…
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