Abstract: Dealing with the inconsistency between a foreground object and a background image is a challenging task in high-fidelity image composition. State-of-the-art methods strive to harmonize the composed image by adapting the style of foreground objects to be compatible with the background image, whereas the potential shadow of foreground objects within the composed image which is critical to the composition realism is largely neglected. In this paper, we propose an Adversarial Image Composition Net (AIC-Net) that achieves realistic image composition by considering potential shadows that the foreground object projects in the composed image. A novel branched generation mechanism is proposed, which disentangles the generation of shadows and the transfer of foreground styles for optimal accomplishment of the two tasks simultaneously. A differentiable spatial transformation module is designed which bridges the local harmonization and the global harmonization to achieve their joint optimization effectively. Extensive experiments on pedestrian and car composition tasks show that the proposed AIC-Net achieves superior composition performance qualitatively and quantitatively.

SlidesLive

Similar Papers

Localin Reshuffle Net: Toward Naturally and Efficiently Facial Image Blending
Chengyao Zheng (Southeast Univeristy), Siyu Xia (Southeast University, China), Joseph Robinson (Northeastern University)*, Changsheng Lu (Shanghai Jiao Tong University), Wayne Wu (Tsinghua University), Chen Qian (SenseTime), Ming Shao (University of Massachusetts Dartmouth)
Robust High Dynamic Range (HDR) Imaging with Complex Motion and Parallax
Zhiyuan Pu (NanJing University), Peiyao Guo (Nanjing University), M. Salman Asif (University of California, Riverside), Zhan Ma (Nanjing University)*
Local Facial Makeup Transfer via Disentangled Representation
Zhaoyang Sun (Wuhan University of Technology)*, Feng Liu (Wuhan University of Technology), Wen Liu (Wuhan University of Technology), Shengwu Xiong (Wuhan University of Technology), Wenxuan Liu (Wuhan University of Technology)