Image deblurring is a classic problem in low-level computer vision, which aims to recover a sharp image from a blurred input image. Recent advances in deep learning have led to significant progress in solving this problem, and a large number of deblurring networks have been proposed. This paper presents a comprehensive and timely survey of recently published deep-learning based image deblurring approaches, aiming to serve the community as a useful literature review. We start by discussing common causes of image blur, introduce benchmark datasets and performance metrics, and summarize different problem formulations. Next we present a taxonomy of methods using convolutional neural networks (CNN) based on architecture, loss function, and application, offering a detailed review and comparison. In addition, we discuss some domain-specific deblurring applications including face images, text, and stereo image pairs. We conclude by discussing key challenges and future research directions.
翻译:低层次的计算机愿景中,图像模糊是一个典型的问题,目的是从模糊的输入图像中恢复清晰的图像。最近深层学习的进展导致在解决这一问题方面取得显著进展,并提出了大量模糊网络的建议。本文件全面及时地调查了最近出版的基于深层学习的图像模糊方法,目的是为社区提供有用的文献审查。我们首先讨论图像模糊的共同原因,引入基准数据集和性能衡量标准,并总结不同的问题配方。接下来,我们根据结构、损失功能和应用,对使用共生神经网络的方法进行分类,提供详细的审查和比较。此外,我们讨论一些特定领域的模糊应用,包括面部图像、文字和立体图像配对。我们最后讨论关键的挑战和未来研究方向。