Abstract:
Age-invariant face recognition is very challenging. To solve the problem that it is difficult to collect cross-age face data of the same person, this paper proposes to us...Show MoreMetadata
Abstract:
Age-invariant face recognition is very challenging. To solve the problem that it is difficult to collect cross-age face data of the same person, this paper proposes to use generative adversarial networks to generate the same person's young and elderly age data for sample enhancement, and use these data to train age-invariant face recognition model. The proposed method is verified on public face-aging datasets: FGNET and CADA-VS. Rank-1 recognition rates reaches 85.04% on FGNET data sets and verification accuracies reaches 96.99% on CADA-VS data sets.
Date of Conference: 02-04 November 2019
Date Added to IEEE Xplore: 27 February 2020
ISBN Information: