Child Face Age-Progression via Deep Feature Aging
- URL: http://arxiv.org/abs/2003.08788v1
- Date: Tue, 17 Mar 2020 23:03:46 GMT
- Title: Child Face Age-Progression via Deep Feature Aging
- Authors: Debayan Deb, Divyansh Aggarwal, Anil K. Jain
- Abstract summary: We propose a feature aging module that can age-progress deep face features output by a face matcher.
The proposed method also outperforms state-of-the-art approaches with a rank-1 identification rate of 95.91%.
- Score: 47.74474569938014
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Given a gallery of face images of missing children, state-of-the-art face
recognition systems fall short in identifying a child (probe) recovered at a
later age. We propose a feature aging module that can age-progress deep face
features output by a face matcher. In addition, the feature aging module guides
age-progression in the image space such that synthesized aged faces can be
utilized to enhance longitudinal face recognition performance of any face
matcher without requiring any explicit training. For time lapses larger than 10
years (the missing child is found after 10 or more years), the proposed
age-progression module improves the closed-set identification accuracy of
FaceNet from 16.53% to 21.44% and CosFace from 60.72% to 66.12% on a child
celebrity dataset, namely ITWCC. The proposed method also outperforms
state-of-the-art approaches with a rank-1 identification rate of 95.91%,
compared to 94.91%, on a public aging dataset, FG-NET, and 99.58%, compared to
99.50%, on CACD-VS. These results suggest that aging face features enhances the
ability to identify young children who are possible victims of child
trafficking or abduction.
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