A deep learning method for image super-resolution based on geometric similarity

2019 
Abstract A single image super-resolution (SR) algorithm that combines deep convolutional neural networks (CNNs) with multi-scale similarity is presented in this work. The aim of this method is to address the incapability of the existing CNN methods in digging the potential information in the image itself. In order to dig these information, the image patches that look similar within the same scale and across the different scales are firstly searched inside the input image. Subsequently, a spatial transform networks (STNs) are embedded into the CNNs to make the similar patches well aligned. The STNs allow the CNNs to have the ability of spatial manipulation of data. Finally, when SR is performing through the proposed pyramid-shaped CNNs, the high-resolution (HR) image will be predicted gradually according to the complementary information provided by these aligned patches. The experimental results confirm the effectiveness of the proposed method and demonstrate it can be compared with state-of-the-art approaches for single image SR.
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