CVAINov 30, 2021

SamplingAug: On the Importance of Patch Sampling Augmentation for Single Image Super-Resolution

arXiv:2111.15185v110 citationsHas Code
Originality Incremental advance
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This is an incremental improvement for researchers and practitioners in computer vision, specifically in image super-resolution.

The paper tackles the problem of single image super-resolution by proposing a data augmentation method that samples informative patches during training, leading to improved convergence and performance across various architectures and scaling factors.

With the development of Deep Neural Networks (DNNs), plenty of methods based on DNNs have been proposed for Single Image Super-Resolution (SISR). However, existing methods mostly train the DNNs on uniformly sampled LR-HR patch pairs, which makes them fail to fully exploit informative patches within the image. In this paper, we present a simple yet effective data augmentation method. We first devise a heuristic metric to evaluate the informative importance of each patch pair. In order to reduce the computational cost for all patch pairs, we further propose to optimize the calculation of our metric by integral image, achieving about two orders of magnitude speedup. The training patch pairs are sampled according to their informative importance with our method. Extensive experiments show our sampling augmentation can consistently improve the convergence and boost the performance of various SISR architectures, including EDSR, RCAN, RDN, SRCNN and ESPCN across different scaling factors (x2, x3, x4). Code is available at https://github.com/littlepure2333/SamplingAug

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