1. Introduction
SISR aims to reconstructed a high-resolution image from a low-resolution image. It is a fundamental low-level vision task and has a wide range of applications [9], [13], [40]. Currently, deep learning based approaches [2], [5], [11], [12], [18], [28], [29], [31], [32], [34], [36], [38], [39], [48], [49] have achieved great success and continuously improved the quality of reconstructed images. However, most of these advanced works require considerable computation costs, which makes them difficult to be deployed on resource-constrained devices for real-world applications. Therefore, it is essential to improve the efficiency of SISR models and design lightweight models that can achieve good trade-offs between image quality and inference time.