2022
DOI: 10.3390/math10030480
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Age-Invariant Adversarial Feature Learning for Kinship Verification

Abstract: Kinship verification aims to determine whether two given persons are blood relatives. This technique can be leveraged in many real-world scenarios, such as finding missing people, identification of kinship in forensic medicine, and certain types of interdisciplinary research. Most existing methods extract facial features directly from given images and examine the full set of features to verify kinship. However, most approaches are easily affected by the age gap among faces, with few methods taking age into acc… Show more

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Cited by 6 publications
(1 citation statement)
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“…Finally, Liu et al 33 proposed an age-invariant adversarial feature learning module (AIAF) which provided full face features to generate two uncorrelated components, i.e., identity-related features and age-related features, to verify the kin relationship. Their verification accuracy on KFW-I and KFW-II datasets were 85.08% and 85.5%.…”
Section: Deep Learning (Dl) Feature-based Studiesmentioning
confidence: 99%
“…Finally, Liu et al 33 proposed an age-invariant adversarial feature learning module (AIAF) which provided full face features to generate two uncorrelated components, i.e., identity-related features and age-related features, to verify the kin relationship. Their verification accuracy on KFW-I and KFW-II datasets were 85.08% and 85.5%.…”
Section: Deep Learning (Dl) Feature-based Studiesmentioning
confidence: 99%