SPARSITY IMPROVES UNSUPERVISED ATTRIBUTE DISCOVERY IN STYLEGAN
Shusen Liu, Rushil Anirudh, Jayaraman J. Thiagarajan, Peer-Timo Bremer
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Rich semantics exist in latent spaces inferred using deep generative models. The ability to extract and interpret them is not only essential for understanding the underlying factors of variation in the data distribution, but also crucial for controlled image generation. Several methods have been proposed to identify semantically meaningful linear directions, either through existing annotations, or relying on identifying directions of large variation that arise from the data representation of the network. In this paper, we identify a new criterion, representation sparsity, that allows us to produce extremely efficient yet diverse semantic directions in GAN (generative adversarial network) latent spaces. The observation also reveals a potential deeper connection between representation sparsity and semantics in deep neural networks that worth further exploration.