A Low Rank Gaussian Mixture Latent Model for Face Generation - GREYC image
Communication Dans Un Congrès Année : 2024

A Low Rank Gaussian Mixture Latent Model for Face Generation

Résumé

Generative modeling of natural images has seen significant progress, but large-scale foundation models raise concerns about environmental impact, privacy, and biases. This motivates investigating more efficient and interpretable generative models. This work proposes a simple latent parametric generative model focused on realistic face generation, a domain that has seen success with neural networks. The model uses a low-dimensional latent representation from a pre-trained autoencoder, and proceeds in two stages: (1) modeling the latent distribution as a mixture of multivariate Gaussians trained on a limited dataset, and (2) generating low-rank random codes from this prior and remapping them using nearest neighbor matching. Comparative experiments demonstrate the advantages of the proposed approach.
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Dates et versions

hal-04715052 , version 1 (30-09-2024)

Identifiants

  • HAL Id : hal-04715052 , version 1

Citer

Benjamin Samuth, Julien Rabin, Frédéric Jurie, David Tschumperlé. A Low Rank Gaussian Mixture Latent Model for Face Generation. International Conference on Pattern Recognition, Dec 2024, Kolkata, India. ⟨hal-04715052⟩
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