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Generative Fields: Uncovering Hierarchical Feature Control for StyleGAN via Inverted Receptive Fields

24 April 2025
Zhuo He
Paul Henderson
Nicolas Pugeault
    GAN
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Abstract

StyleGAN has demonstrated the ability of GANs to synthesize highly-realistic faces of imaginary people from random noise. One limitation of GAN-based image generation is the difficulty of controlling the features of the generated image, due to the strong entanglement of the low-dimensional latent space. Previous work that aimed to control StyleGAN with image or text prompts modulated sampling in W latent space, which is more expressive than Z latent space. However, W space still has restricted expressivity since it does not control the feature synthesis directly; also the feature embedding in W space requires a pre-training process to reconstruct the style signal, limiting its application. This paper introduces the concept of "generative fields" to explain the hierarchical feature synthesis in StyleGAN, inspired by the receptive fields of convolution neural networks (CNNs). Additionally, we propose a new image editing pipeline for StyleGAN using generative field theory and the channel-wise style latent space S, utilizing the intrinsic structural feature of CNNs to achieve disentangled control of feature synthesis at synthesis time.

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@article{he2025_2504.17712,
  title={ Generative Fields: Uncovering Hierarchical Feature Control for StyleGAN via Inverted Receptive Fields },
  author={ Zhuo He and Paul Henderson and Nicolas Pugeault },
  journal={arXiv preprint arXiv:2504.17712},
  year={ 2025 }
}
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