ArXiv TLDR

Are Face Embeddings Compatible Across Deep Neural Network Models?

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2604.07282

Fizza Rubab, Yiying Tong, Arun Ross

cs.CVcs.LG

TLDR

This paper finds that face embeddings from different deep neural network models are surprisingly compatible and can be aligned with simple transformations.

Key contributions

  • Analyzes geometric structure of face embedding spaces across diverse DNN models.
  • Shows simple affine transformations can align face representations from different models.
  • Demonstrates improved cross-model face recognition (identification/verification) with alignment.
  • Reveals representational convergence in facial identity encoding across model families.

Why it matters

This research reveals that face embeddings from different DNN models are surprisingly compatible, enabling better interoperability and ensemble design. It suggests a convergence in how models encode facial identity, which has implications for biometric security and future model development.

Original Abstract

Automated face recognition has made rapid strides over the past decade due to the unprecedented rise of deep neural network (DNN) models that can be trained for domain-specific tasks. At the same time, foundation models that are pretrained on broad vision or vision-language tasks have shown impressive generalization across diverse domains, including biometrics. This raises an important question: Do different DNN models--both domain-specific and foundation models--encode facial identity in similar ways, despite being trained on different datasets, loss functions, and architectures? In this regard, we directly analyze the geometric structure of embedding spaces imputed by different DNN models. Treating embeddings of face images as point clouds, we study whether simple affine transformations can align face representations of one model with another. Our findings reveal surprising cross-model compatibility: low-capacity linear mappings substantially improve cross-model face recognition over unaligned baselines for both face identification and verification tasks. Alignment patterns generalize across datasets and vary systematically across model families, indicating representational convergence in facial identity encoding. These findings have implications for model interoperability, ensemble design, and biometric template security.

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