Coarse-to-fine schemes are widely used in traditional single-image motion
deblur; however, in the context of deep learning, existing multi-scale
algorithms not only require the use of complex modules for feature fusion of
low-scale RGB images and deep semantics, but also manually generate
low-resolution pairs of images that do not have sufficient confidence. In this
work, we propose a multi-scale network based on single-input and
multiple-outputs(SIMO) for motion deblurring. This simplifies the complexity of
algorithms based on a coarse-to-fine scheme. To alleviate restoration defects
impacting detail information brought about by using a multi-scale architecture,
we combine the characteristics of real-world blurring trajectories with a
learnable wavelet transform module to focus on the directional continuity and
frequency features of the step-by-step transitions between blurred images to
sharp images. In conclusion, we propose a multi-scale network with a learnable
discrete wavelet transform (MLWNet), which exhibits state-of-the-art
performance on multiple real-world deblurred datasets, in terms of both
subjective and objective quality as well as computational efficiency