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Zhang, Liheng; Qi, Guo-Jun (, IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR))
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Edraki, Marzieh; Qi, Guo-Jun (, Proceedings of European Conference on Computer Vision (ECCV 2018))The classic Generative Adversarial Net (GAN) and its variants can be roughly categorized into two large families: the unregularized versus regularized GANs. By relaxing the non-parametric assumption on the discriminator in the classic GAN, the regularized GANs have better generalization ability to produce new samples drawn from the real distribution. Although the regularized GANs have shown compelling performances, there still exist some unaddressed problems. It is well known that the real data like natural images are not uniformly distributed over the whole data space. Instead, they are often restricted to a low-dimensional manifold of the ambient space. Such a manifold assumption suggests the distance over the manifold should be a better measure to characterize the distinct between real and fake samples. Thus, we define a pullback operator to map samples back to their data manifold, and a manifold margin is defined as the distance between the pullback representations to distinguish between real and fake samples and learn the optimal generators. We justify the proposed model from both theoretical and empirical perspectives, demonstrating it can produce high quality images as compared with the other state-of-the-art GAN models.more » « less
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Zaeemzadeh, Alireza; Joneidi, Mohsen; Rahnavard, Nazanin; Qi, Guo-Jun (, IEEE Transactions on Cognitive Communications and Networking)
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Qi, Guo-Jun; Zhang, Liheng; Hu, Hao; Edraki, Marzieh; Wang, Jingdong; Hua, Xian-Sheng (, Proceedings - IEEE Computer Society Conference on Computer Vision and Pattern Recognition)
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