When Age-Invariant Face Recognition Meets Face Age Synthesis: A Multi-Task Learning Framework and A New Benchmark
Zhizhong Huang, Junping Zhang, Hongming Shan

TL;DR
This paper introduces MTLFace, a multi-task framework that jointly improves age-invariant face recognition and face age synthesis, providing interpretable results and a new benchmark dataset.
Contribution
The paper proposes a novel multi-task learning framework with attention-based feature decomposition and identity conditional face synthesis, enhancing both recognition and synthesis tasks.
Findings
MTLFace outperforms existing methods on five cross-age face recognition benchmarks.
The framework produces high-quality, age-smooth face synthesis results.
Leveraging synthesized faces improves recognition accuracy.
Abstract
To minimize the impact of age variation on face recognition, age-invariant face recognition (AIFR) extracts identity-related discriminative features by minimizing the correlation between identity- and age-related features while face age synthesis (FAS) eliminates age variation by converting the faces in different age groups to the same group. However, AIFR lacks visual results for model interpretation and FAS compromises downstream recognition due to artifacts. Therefore, we propose a unified, multi-task framework to jointly handle these two tasks, termed MTLFace, which can learn the age-invariant identity-related representation for face recognition while achieving pleasing face synthesis for model interpretation. Specifically, we propose an attention-based feature decomposition to decompose the mixed face features into two uncorrelated components -- identity- and age-related features…
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Taxonomy
TopicsFace recognition and analysis · Generative Adversarial Networks and Image Synthesis
