基于多列卷积注意网络的图像外推

Xiaofeng Zhang, Songsong Wu, Hao Ding, Zuoyong Li
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引用次数: 8

摘要

图像绘制是基于对网络的分支生成。许多最近的深度学习方法在修复地图中大量缺失区域的挑战性任务中显示出了巨大的进步。这些方法可以在视觉上恢复到合理的图像和结构,但仍然会产生与周围区域不同的扭曲结构或模糊结构。在过去的一年里,图像扩张已经开始慢慢进入我们的视野。先前基于数学方法的研究开始受到关注,但外推这项工作的挑战非常大,因此我们提出了多列卷积。通过训练注意力网络在图像中产生空白,图像扩展的深度学习方法非常有前途,并且被证明是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image extrapolation based on multi-column convolutional attention network
Image inpainting is based on the generation of branches against the network. Many recent methods of deep learning have shown great progress in challenging tasks that repair large numbers of missing areas in the map. These methods can be visually restored to a reasonable image and structure, but still produce a distorted structure or a fuzzy structure that is different in the surrounding area. In the past year, image expansion has begun to slowly enter our field of vision. Previous research based on mathematical methods started to get noticed, but the challenge of extrapolating this work is very huge, so we propose multi-column convolution. The attention network is trained to produce a blank gap in the image, and the depth learning method of image expansion is very promising and proved to be feasible.
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