This paper proposes a weakly- and self-supervised deep convolutional neural network (WSSDCNN) for content-aware image retargeting. Our network takes a source image and a target aspect ratio, and then directly outputs a retargeted image. Retargeting is performed through a shift map, which is a pixel-wise mapping from the source to the target grid. Our method implicitly learns an attention map, which leads to a content-aware shift map for image retargeting. As a result, discriminative parts in an image are preserved, while background regions are adjusted seamlessly. In the training phase, pairs of an image and its image-level annotation are used to compute content and structure losses. We demonstrate the effectiveness of our proposed method for a retargeting application with insightful analyses.
@article{arxiv.1708.02731,
title = {Weakly- and Self-Supervised Learning for Content-Aware Deep Image Retargeting},
author = {Donghyeon Cho and Jinsun Park and Tae-Hyun Oh and Yu-Wing Tai and In So Kweon},
journal= {arXiv preprint arXiv:1708.02731},
year = {2019}
}
Comments
10 pages, 11 figures. To appear in ICCV 2017, Spotlight Presentation