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Pose-invariant face recognition via feature-space pose frontalization

22 May 2025
Nikolay Stanishev
Yuhang Lu
Touradj Ebrahimi
    CVBM
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Abstract

Pose-invariant face recognition has become a challenging problem for modern AI-based face recognition systems. It aims at matching a profile face captured in the wild with a frontal face registered in a database. Existing methods perform face frontalization via either generative models or learning a pose robust feature representation. In this paper, a new method is presented to perform face frontalization and recognition within the feature space. First, a novel feature space pose frontalization module (FSPFM) is proposed to transform profile images with arbitrary angles into frontal counterparts. Second, a new training paradigm is proposed to maximize the potential of FSPFM and boost its performance. The latter consists of a pre-training and an attention-guided fine-tuning stage. Moreover, extensive experiments have been conducted on five popular face recognition benchmarks. Results show that not only our method outperforms the state-of-the-art in the pose-invariant face recognition task but also maintains superior performance in other standard scenarios.

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@article{stanishev2025_2505.16412,
  title={ Pose-invariant face recognition via feature-space pose frontalization },
  author={ Nikolay Stanishev and Yuhang Lu and Touradj Ebrahimi },
  journal={arXiv preprint arXiv:2505.16412},
  year={ 2025 }
}
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