FineGAN: Unsupervised Hierarchical Disentanglement for Fine-Grained Object Generation and Discovery
Singh, Krishna Kumar, Ojha, Utkarsh, Lee, Yong Jae
–arXiv.org Artificial Intelligence
We propose FineGAN, a novel unsupervised GAN framework, which disentangles the background, object shape, and object appearance to hierarchically generate images of fine-grained object categories. To disentangle the factors without any supervision, our key idea is to use information theory to associate each factor to a latent code, and to condition the relationships between the codes in a specific way to induce the desired hierarchy. Through extensive experiments, we show that FineGAN achieves the desired disentanglement to generate realistic and diverse images belonging to fine-grained classes of birds, dogs, and cars. Using FineGAN's automatically learned features, we also cluster real images as a first attempt at solving the novel problem of unsupervised fine-grained object category discovery. Our video demo can be found at https://www.youtube.com/watch?v=tkk0SeWGu-8.
arXiv.org Artificial Intelligence
Nov-27-2018
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