Training learning-based deblurring methods demands a significant amount of blurred and sharp image pairs. Unfortunately, existing synthetic datasets are not realistic enough, and existing real-world blur datasets provide limited diversity of scenes and camera settings. As a result, deblurring models trained on them still suffer from the lack of generalization ability for handling real blurred images. In this paper, we analyze various factors that introduce differences between real and synthetic blurred images, and present a novel blur synthesis pipeline that can synthesize more realistic blur. We also present RSBlur, a novel dataset that contains real blurred images and the corresponding sequences of sharp images. The RSBlur dataset can be used for generating synthetic blurred images to enable detailed analysis on the differences between real and synthetic blur. With our blur synthesis pipeline and RSBlur dataset, we reveal the effects of different factors in the blur synthesis. We also show that our synthesis method can improve the deblurring performance on real blurred images.
翻译:不幸的是,现有的合成数据集不够现实,而现有的真实世界的模糊数据集提供了有限的场景和摄影机设置多样性。因此,针对这些模型所培训的模糊模型仍然缺乏处理真实模糊图像的概括化能力。在本文中,我们分析了造成真实和合成模糊图像之间差异的各种因素,并展示了一个新的模糊合成管道,可以更现实地合成模糊图像。我们还介绍了RSBlur,这是一个包含真实模糊图像的新数据集,以及锐利图像的相应序列。RSBlur数据集可用于生成合成模糊图像,以便能够对真实和合成模糊之间的差异进行详细分析。由于我们的模糊合成管道和RSBlur数据集模糊,我们揭示了模糊合成中不同因素的影响。我们还表明,我们的合成方法可以改进真实模糊图像的模糊性能。