Ming-Yu Liu
Nvidia
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Publication
Featured researches published by Ming-Yu Liu.
european conference on computer vision | 2018
Xun Huang; Ming-Yu Liu; Serge J. Belongie; Jan Kautz
Unsupervised image-to-image translation is an important and challenging problem in computer vision. Given an image in the source domain, the goal is to learn the conditional distribution of corresponding images in the target domain, without seeing any pairs of corresponding images. While this conditional distribution is inherently multimodal, existing approaches make an overly simplified assumption, modeling it as a deterministic one-to-one mapping. As a result, they fail to generate diverse outputs from a given source domain image. To address this limitation, we propose a Multimodal Unsupervised Image-to-image Translation (MUNIT) framework. We assume that the image representation can be decomposed into a content code that is domain-invariant, and a style code that captures domain-specific properties. To translate an image to another domain, we recombine its content code with a random style code sampled from the style space of the target domain. We analyze the proposed framework and establish several theoretical results. Extensive experiments with comparisons to the state-of-the-art approaches further demonstrates the advantage of the proposed framework. Moreover, our framework allows users to control the style of translation outputs by providing an example style image. Code and pretrained models are available at this https URL
european conference on computer vision | 2018
Yijun Li; Ming-Yu Liu; Xueting Li; Ming-Hsuan Yang; Jan Kautz
Photorealistic image stylization concerns transferring style of a reference photo to a content photo with the constraint that the stylized photo should remain photorealistic. While several photorealistic image stylization methods exist, they tend to generate spatially inconsistent stylizations with noticeable artifacts. In this paper, we propose a method to address these issues. The proposed method consists of a stylization step and a smoothing step. While the stylization step transfers the style of the reference photo to the content photo, the smoothing step ensures spatially consistent stylizations. Each of the steps has a closed-form solution and can be computed efficiently. We conduct extensive experimental validations. The results show that the proposed method generates photorealistic stylization outputs that are more preferred by human subjects as compared to those by the competing methods while running much faster. Source code and additional results are available at this https URL .
neural information processing systems | 2017
Ming-Yu Liu; Thomas M. Breuel; Jan Kautz
computer vision and pattern recognition | 2018
Ting-Chun Wang; Ming-Yu Liu; Jun-Yan Zhu; Andrew J. Tao; Jan Kautz; Bryan Catanzaro
computer vision and pattern recognition | 2018
Sergey Tulyakov; Ming-Yu Liu; Xiaodong Yang; Jan Kautz
computer vision and pattern recognition | 2018
Deqing Sun; Xiaodong Yang; Ming-Yu Liu; Jan Kautz
national conference on artificial intelligence | 2018
Yi-Hsuan Tsai; Ming-Yu Liu; Deqing Sun; Ming-Hsuan Yang; Jan Kautz
international conference on computational photography | 2018
Huaijin Chen; Jinwei Gu; Orazio Gallo; Ming-Yu Liu; Ashok Veeraraghavan; Jan Kautz
computer vision and pattern recognition | 2018
Wei-Chih Tu; Ming-Yu Liu; Varun Jampani; Deqing Sun; Shao-Yi Chien; Ming-Hsuan Yang; Jan Kautz
neural information processing systems | 2018
Ting-Chun Wang; Ming-Yu Liu; Jun-Yan Zhu; Guilin Guilin; Andrew J. Tao; Jan Kautz; Bryan Catanzaro