Residual feature decomposition and multi-task learning-based variation-invariant face recognition

Abbas Haider, Guanfeng Wu, Ivor Spence, Hui Wang

Research output: Contribution to journalArticlepeer-review

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Abstract

Facial identity is subject to two primary natural variations: time-dependent (TD) factors such as age, and time-independent (TID) factors including sex and race. This study aims to address a broader problem known as variation-invariant face recognition (VIFR) by exploring the question: “How can identity preservation be maximized in the presence of TD and TID variations?" While existing state-of-the-art (SOTA) methods focus on either age-invariant or race and sex-invariant FR, our approach introduces the first novel deep learning architecture utilizing multi-task learning to tackle VIFR, termed “multi-task learning-based variation-invariant face recognition (MTLVIFR)." We redefine FR by incorporating both TD and TID, decomposing faces into age (TD) and residual features (TID: sex, race, and identity). MTLVIFR outperforms existing methods by 2% in LFW and CALFW benchmarks, 1% in CALFW, and 5% in AgeDB (20 years of protocol) in terms of face verification score. Moreover, it achieves higher face identification scores compared to all SOTA methods.
Original languageEnglish
Pages (from-to)20147-20166
Number of pages20
JournalNeural Computing and Applications
Volume36
Issue number32
Early online date11 Aug 2024
DOIs
Publication statusPublished (in print/issue) - 1 Nov 2024

Keywords

  • Face recognition
  • Deep learning
  • Feature decomposition
  • Multi-task learning

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