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Date: Sunday, November 17th
Time: 2:15pm - 4:00pm
Venue: Plaza Meeting Room P3
Session Chair: Diego Gutierrez, Universidad de Zaragoza, International Imaging Industry Association (I3A)


A Decomposition Method of Object Transfiguration

Author(s)/Presenter(s): Seung Joon Lee, Sogang University, South Korea
Keon-Woo Kang, Sogang University, South Korea
Siyeong Lee, NAVER LABS, South Korea
Suk-Ju Kang, Sogang University, South Korea

Abstract: The method that decomposes an object transfiguration task into two subtasks is proposed:object removal and object synthesis. We formulate each task distinguishing a background and an object using instance information.


ChinaStyle: A Mask-Aware Generative Adversarial Network for Chinese Traditional Image Translation

Author(s)/Presenter(s): Yuan Wang, Institute of Information Engineering, Chinese Academy Of Sciences, China
Weibo Zhang, Institute of Information Engineering, Chinese Academy Of Sciences; School of Cyber Security, University of Chinese Academy of Sciences, China
Peng Chen, Institute of Information Engineering, Chinese Academy Of Sciences; School of Cyber Security, University of Chinese Academy of Sciences, China

Abstract: This paper introduced MA-GAN to generate Chinese traditional paintings from portrait photos with our training dataset. The experiment shows it is more effective than existing methods both quantitatively and qualitatively.


Structure-Aware Image Expansion with Global Attention

Author(s)/Presenter(s): Dewen Guo, Peking University, China
Jie Feng, Peking University, China
Bingfeng Zhou, Peking University, China

Abstract: We propose a learning-based method combining structure-aware and visual attention strategies to for image expansion. We apply our method on a human face dataset, which containing semantic and structural details.


The Power of Box Filters: Real-time Approximation to Large Convolution Kernel by Box-filtered Image Pyramid

Author(s)/Presenter(s): Tianchen Xu, Advanced Micro Devices, Inc. (AMD), China
Xiaohua Ren, Tencent Youtu X-Lab, China
Enhua Wu, State Key Lab of CS, Institute of Software, Chinese Academy of Sciences & Univ. of CAS; University of Macau, China

Abstract: This paper presents a novel solution for approximations to some large convolution kernels by leveraging a weighted box-filtered image pyramid set. Our algorithm is kernel-size independent, and fast on GPU.