Very long natural scenery image prediction by outpainting

Z Yang, J Dong, P Liu, Y Yang… - Proceedings of the IEEE …, 2019 - openaccess.thecvf.com
Proceedings of the IEEE/CVF international conference on …, 2019openaccess.thecvf.com
Comparing to image inpainting, image outpainting receives less attention due to two
challenges in it. The first challenge is how to keep the spatial and content consistency
between generated images and original input. The second challenge is how to maintain
high quality in generated results, especially for multi-step generations in which generated
regions are spatially far away from the initial input. To solve the two problems, we devise
some innovative modules, named Skip Horizontal Connection and Recurrent Content …
Abstract
Comparing to image inpainting, image outpainting receives less attention due to two challenges in it. The first challenge is how to keep the spatial and content consistency between generated images and original input. The second challenge is how to maintain high quality in generated results, especially for multi-step generations in which generated regions are spatially far away from the initial input. To solve the two problems, we devise some innovative modules, named Skip Horizontal Connection and Recurrent Content Transfer, and integrate them into our designed encoder-decoder structure. By this design, our network can generate highly realistic outpainting prediction effectively and efficiently. Other than that, our method can generate new images with very long sizes while keeping the same style and semantic content as the given input. To test the effectiveness of the proposed architecture, we collect a new scenery dataset with diverse, complicated natural scenes. The experimental results on this dataset have demonstrated the efficacy of our proposed network.
openaccess.thecvf.com
以上显示的是最相近的搜索结果。 查看全部搜索结果

Google学术搜索按钮

example.edu/paper.pdf
搜索
获取 PDF 文件
引用
References