Author:
Kang Sunwon,Kim Juwan,Jang In Sung,Lee Byoung-Dai
Abstract
AbstractRecent advances in deep learning technology, and the availability of public shadow image datasets, have enabled significant performance improvements of shadow removal tasks in computer vision. However, most deep learning-based shadow removal methods are usually trained in a supervised manner, in which paired shadow and shadow-free data are required. We developed a weakly supervised generative adversarial network with a cycle-in-cycle structure for shadow removal using unpaired data. In addition, we introduced new loss functions to reduce unnecessary transformations for non-shadow areas and to enable smooth transformations for shadow boundary areas. We conducted extensive experiments using the ISTD and Video Shadow Removal datasets to assess the effectiveness of our methods. The experimental results show that our method is superior to other state-of-the-art methods trained on unpaired data.
Funder
the Ministry of Land, Infrastructure and Transport of the Korean government
Publisher
Springer Science and Business Media LLC
Cited by
3 articles.
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