Anil Jain

Papers from this author

Identifying Missing Children: Face Age-Progression Via Deep Feature Aging

Debayan Deb, Divyansh Aggarwal, Anil Jain

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Auto-TLDR; Aging Face Features for Missing Children Identification

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Given a face image of a recovered child at probe-age, we search a gallery of missing children with known identities and gallery-ages at which they were either lost or stolen in an attempt to unite the recovered child with his family. We propose a feature aging module that can age-progress deep face features output by a face matcher to improve the recognition accuracy of age-separated child face images. In addition, the feature aging module guides age-progression in the image space such that synthesized aged gallery faces can be utilized to further enhance cross-age face matching accuracy of any commodity face matcher. For time lapses larger than 10 years (the missing child is recovered after 10 or more years), the proposed age-progression module improves the closed-set identification accuracy of 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.