Abstract

Image deblurring has been a challenging ill-posed problem in computer vision. Gaussian blur is a common model for image and signal degradation. The deep learning-based deblurring methods have attracted much attention due to their advantages over the traditional methods relying on hand-designed features. However, the existing deep learning-based deblurring techniques still cannot perform well in restoring the fine details and reconstructing the sharp edges. To address this issue, we have designed an effective end-to-end deep learning-based non-blind image deblurring algorithm. In the proposed method, a multi-stream bottom-top-bottom attention network (MBANet) with the encoder-to-decoder structure is designed to integrate low-level cues and high-level semantic information, which can facilitate extracting image features more effectively and improve the computational efficiency of the network. Moreover, the MBANet adopts a coarse-to-fine multi-scale strategy to process the input images to improve image deblurring performance. Furthermore, the global information-based fusion and reconstruction network is proposed to fuse multi-scale output maps to improve the global spatial information and recurrently refine the output deblurred image. The experiments were done on the public GoPro dataset and the realistic and dynamic scenes (REDS) dataset to evaluate the effectiveness and robustness of the proposed method. The experimental results show that the proposed method generally outperforms some traditional deburring methods and deep learning-based state-of-the-art deblurring methods such as scale-recurrent network (SRN) and denoising prior driven deep neural network (DPDNN) in terms of such quantitative indexes as peak signal-to-noise ratio (PSNR) and structural similarity (SSIM) and human vision.

Highlights

  • Image blurring is one of the major reasons for image quality degradation

  • We proposed two deep learning models to produce the deblurred image with the image details preserved well

  • We carried out experiments on the chosen realistic and dynamic scenes (REDS) dataset and GoPro dataset [42] to determine the key parameters in the proposed networks and evaluate their performance

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Summary

Introduction

Image blurring is one of the major reasons for image quality degradation. It poses a great challenge for understanding and analyzing the high-frequency components in the images [1]. Deblurring has been a hot research field in image restoration [2,3,4,5,6]. Image deblurring is the process of inferring the latent sharp images in the absence of degradation model information. The blur types can be roughly divided into two categories. Camera shake during exposure will blur the captured image. The second one is defocus blur produced by such factors as atmospheric turbulence and aberrations in the optical system. In most situations of practical interest, Sensors 2020, 20, 3724; doi:10.3390/s20133724 www.mdpi.com/journal/sensors

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