Deep Image Harmonization by Bridging the Reality Gap (2103.17104v3)
Abstract: Image harmonization has been significantly advanced with large-scale harmonization dataset. However, the current way to build dataset is still labor-intensive, which adversely affects the extendability of dataset. To address this problem, we propose to construct rendered harmonization dataset with fewer human efforts to augment the existing real-world dataset. To leverage both real-world images and rendered images, we propose a cross-domain harmonization network to bridge the domain gap between two domains. Moreover, we also employ well-designed style classifiers and losses to facilitate cross-domain knowledge transfer. Extensive experiments demonstrate the potential of using rendered images for image harmonization and the effectiveness of our proposed network.
- Junyan Cao (35 papers)
- Wenyan Cong (18 papers)
- Li Niu (79 papers)
- Jianfu Zhang (42 papers)
- Liqing Zhang (80 papers)