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Journal Articles Pattern Recognition Letters Year : 2022

Multi-attribute balanced sampling for disentangled GAN controls

Abstract

Various controls over the generated data can be extracted from the latent space of a pre-trained GAN, as it implicitly encodes the semantics of the training data. The discovered controls allow to vary semantic attributes in the generated images but usually lead to entangled edits that affect multiple attributes at the same time. Supervised approaches typically sample and annotate a collection of latent codes, then train classifiers in the latent space to identify the controls. Since the data generated by GANs reflects the biases of the original dataset, so do the resulting semantic controls. We propose to address disentanglement by balancing the semantics of the dataset before training the classifiers. We demonstrate the effectiveness of this approach by extracting disentangled linear directions for face manipulation on state-of-the-art GAN architectures (including StyleGAN2 and StyleGAN3) and two datasets, CelebAHQ and FFHQ. We show that this simple and general approach outperforms state-of-the-art classifier-based methods while avoiding the need for disentanglement-enforcing post-processing.
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Dates and versions

hal-03404279 , version 2 (27-10-2021)
hal-03404279 , version 3 (26-01-2022)
hal-03404279 , version 1 (03-01-2023)

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Cite

Perla Doubinsky, Nicolas Audebert, Michel Crucianu, Hervé Le Borgne. Multi-attribute balanced sampling for disentangled GAN controls. Pattern Recognition Letters, 2022, 162, pp.56-62. ⟨10.1016/j.patrec.2022.08.012⟩. ⟨hal-03404279v1⟩
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