Exploiting Reflectional and Rotational Invariance in Single Image Superresolution

S. Donné, Laurens Meeus, H. Luong, B. Goossens, W. Philips
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引用次数: 5

Abstract

Stationarity of reconstruction problems is the crux to enabling convolutional neural networks for many image processing tasks: the output estimate for a pixel is generally not dependent on its location within the image but only on its immediate neighbourhood. We expect other invariances, too. For most pixel-processing tasks, rigid transformations should commute with the processing: a rigid transformation of the input should result in that same transformation of the output. In existing literature this is taken into account indirectly by augmenting the training set: reflected and rotated versions of the inputs are also fed to the network when optimizing the network weights. In contrast, we enforce this invariance through the network design. Because of the encompassing nature of the proposed architecture, it can directly enhance existing CNN-based algorithms. We show how it can be applied to SRCNN and FSRCNN both, speeding up convergence in the initial training phase, and improving performance both for pretrained weights and after finetuning.
利用单幅图像超分辨率的反射和旋转不变性
重建问题的平稳性是卷积神经网络实现许多图像处理任务的关键:一个像素的输出估计通常不依赖于它在图像中的位置,而只依赖于它的近邻。我们还期待其他的不变性。对于大多数像素处理任务,严格的转换应该与处理同步进行:输入的严格转换应该导致输出的相同转换。在现有文献中,这是通过增加训练集来间接考虑的:在优化网络权重时,也将输入的反射和旋转版本馈给网络。相反,我们通过网络设计来加强这种不变性。由于所提出的架构的包涵性,它可以直接增强现有的基于cnn的算法。我们展示了如何将其应用于SRCNN和FSRCNN,加速初始训练阶段的收敛,并提高预训练权值和微调后的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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