On the Biometric Capacity of Generative Face Models
Vishnu Naresh Boddeti, Gautam Sreekumar, Arun Ross

TL;DR
This paper introduces a statistical method to estimate the maximum number of unique identities generative face models can produce, providing a benchmark for their scalability and demographic biases.
Contribution
It proposes a novel statistical approach to quantify the biometric capacity of generative face models across different models and demographic attributes.
Findings
StyleGAN3 has an estimated capacity of 1.43 million identities at FAR 0.1%.
Capacity decreases significantly at lower FAR thresholds.
No significant gender disparity in capacity, but some age-related disparities exist.
Abstract
There has been tremendous progress in generating realistic faces with high fidelity over the past few years. Despite this progress, a crucial question remains unanswered: "Given a generative face model, how many unique identities can it generate?" In other words, what is the biometric capacity of the generative face model? A scientific basis for answering this question will benefit evaluating and comparing different generative face models and establish an upper bound on their scalability. This paper proposes a statistical approach to estimate the biometric capacity of generated face images in a hyperspherical feature space. We employ our approach on multiple generative models, including unconditional generators like StyleGAN, Latent Diffusion Model, and "Generated Photos," as well as DCFace, a class-conditional generator. We also estimate capacity w.r.t. demographic attributes such as…
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Taxonomy
TopicsFace recognition and analysis · Generative Adversarial Networks and Image Synthesis · Law in Society and Culture
MethodsAdaptive Instance Normalization · R1 Regularization · HuMan(Expedia)||How do I get a human at Expedia? · Dense Connections · Convolution · Diffusion · Feedforward Network · Latent Diffusion Model · Additive Angular Margin Loss · StyleGAN
