论文标题

通过强调缺失区域的复杂性来改善深层图像

Improve Deep Image Inpainting by Emphasizing the Complexity of Missing Regions

论文作者

Wang, Yufeng, Li, Dan, Xu, Cong, Yang, Min

论文摘要

深层图像介绍研究主要集中于构建各种神经网络体系结构或实现新颖的优化目标。但是,一方面,构建最先进的深层介绍模型是一项极其复杂的任务,另一方面,产生的性能提升有时非常有限。我们认为,除了介绍模型的框架外,经常被忽略的轻巧传统图像处理技术实际上对这些深层模型有帮助。在本文中,我们借助经典图像复杂度指标来增强深层图像介绍模型。提出了一个由缺失的复杂性和远期损失组成的知识辅助索引,以指导训练程序中的批次选择。该指数有助于找到更有利于在每次迭代中优化的样本,并最终提高整体覆盖性能。提出的方法很简单,可以通过仅更改几行代码来插入许多深层介绍模型。我们通过实验证明了各种数据集上几种最近开发的图像浇筑模型的改进。

Deep image inpainting research mainly focuses on constructing various neural network architectures or imposing novel optimization objectives. However, on the one hand, building a state-of-the-art deep inpainting model is an extremely complex task, and on the other hand, the resulting performance gains are sometimes very limited. We believe that besides the frameworks of inpainting models, lightweight traditional image processing techniques, which are often overlooked, can actually be helpful to these deep models. In this paper, we enhance the deep image inpainting models with the help of classical image complexity metrics. A knowledge-assisted index composed of missingness complexity and forward loss is presented to guide the batch selection in the training procedure. This index helps find samples that are more conducive to optimization in each iteration and ultimately boost the overall inpainting performance. The proposed approach is simple and can be plugged into many deep inpainting models by changing only a few lines of code. We experimentally demonstrate the improvements for several recently developed image inpainting models on various datasets.

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