Chao Dong
The Chinese University of Hong Kong
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Publication
Featured researches published by Chao Dong.
IEEE Transactions on Pattern Analysis and Machine Intelligence | 2016
Chao Dong; Chen Change Loy; Kaiming He; Xiaoou Tang
We propose a deep learning method for single image super-resolution (SR). Our method directly learns an end-to-end mapping between the low/high-resolution images. The mapping is represented as a deep convolutional neural network (CNN) that takes the low-resolution image as the input and outputs the high-resolution one. We further show that traditional sparse-coding-based SR methods can also be viewed as a deep convolutional network. But unlike traditional methods that handle each component separately, our method jointly optimizes all layers. Our deep CNN has a lightweight structure, yet demonstrates state-of-the-art restoration quality, and achieves fast speed for practical on-line usage. We explore different network structures and parameter settings to achieve trade-offs between performance and speed. Moreover, we extend our network to cope with three color channels simultaneously, and show better overall reconstruction quality.
european conference on computer vision | 2014
Chao Dong; Chen Change Loy; Kaiming He; Xiaoou Tang
We propose a deep learning method for single image super-resolution (SR). Our method directly learns an end-to-end mapping between the low/high-resolution images. The mapping is represented as a deep convolutional neural network (CNN) [15] that takes the low-resolution image as the input and outputs the high-resolution one. We further show that traditional sparse-coding-based SR methods can also be viewed as a deep convolutional network. But unlike traditional methods that handle each component separately, our method jointly optimizes all layers. Our deep CNN has a lightweight structure, yet demonstrates state-of-the-art restoration quality, and achieves fast speed for practical on-line usage.
european conference on computer vision | 2016
Chao Dong; Chen Change Loy; Xiaoou Tang
As a successful deep model applied in image super-resolution (SR), the Super-Resolution Convolutional Neural Network (SRCNN) [1, 2] has demonstrated superior performance to the previous hand-crafted models either in speed and restoration quality. However, the high computational cost still hinders it from practical usage that demands real-time performance (24 fps). In this paper, we aim at accelerating the current SRCNN, and propose a compact hourglass-shape CNN structure for faster and better SR. We re-design the SRCNN structure mainly in three aspects. First, we introduce a deconvolution layer at the end of the network, then the mapping is learned directly from the original low-resolution image (without interpolation) to the high-resolution one. Second, we reformulate the mapping layer by shrinking the input feature dimension before mapping and expanding back afterwards. Third, we adopt smaller filter sizes but more mapping layers. The proposed model achieves a speed up of more than 40 times with even superior restoration quality. Further, we present the parameter settings that can achieve real-time performance on a generic CPU while still maintaining good performance. A corresponding transfer strategy is also proposed for fast training and testing across different upscaling factors.
international conference on computer vision | 2015
Chao Dong; Yubin Deng; Chen Change Loy; Xiaoou Tang
arXiv: Computer Vision and Pattern Recognition | 2016
Ke Yu; Chao Dong; Chen Change Loy; Xiaoou Tang
computer vision and pattern recognition | 2018
Xintao Wang; Ke Yu; Chao Dong; Chen Change Loy
computer vision and pattern recognition | 2018
Ke Yu; Chao Dong; Liang Lin; Chen Change Loy
arXiv: Computer Vision and Pattern Recognition | 2015
Chao Dong; Ximei Zhu; Yubin Deng; Chen Change Loy; Yu Qiao
arXiv: Computer Vision and Pattern Recognition | 2018
Xintao Wang; Ke Yu; Shixiang Wu; Jinjin Gu; Yihao Liu; Chao Dong; Chen Change Loy; Yu Qiao; Xiaoou Tang
arXiv: Computer Vision and Pattern Recognition | 2018
Andrey Ignatov; Radu Timofte; Thang Van Vu; Tung Minh Luu; Trung X Pham; Cao Van Nguyen; Yongwoo Kim; Jae-Seok Choi; Munchurl Kim; Jie Huang; Jiewen Ran; Chen Xing; Xingguang Zhou; Pengfei Zhu; Mingrui Geng; Yawei Li; Eirikur Agustsson; Shuhang Gu; Luc Van Gool; Etienne de Stoutz; Nikolay Kobyshev; Kehui Nie; Yan Zhao; Gen Li; Tong Tong; Qinquan Gao; Liu Hanwen; Pablo Navarrete Michelini; Zhu Dan; Hu Fengshuo