论文标题
可学习的模糊内核,用于野外单位散焦
Learnable Blur Kernel for Single-Image Defocus Deblurring in the Wild
论文作者
论文摘要
最近的研究表明,双像素传感器在散焦图估计和图像defocus deblurring方面取得了巨大进展。但是,提取实时双像素视图在算法部署中是麻烦且复杂的。此外,DeDocus Deblurring网络产生的脱毛图像缺乏高频细节,这在人类的感知中并不令人满意。为了克服这个问题,我们提出了一种新颖的defocus Deblurring方法,该方法使用Defocus Map的指导来实现图像脱毛。所提出的方法由可学习的模糊内核组成,以估算defocus图,这是一种无监督的方法,以及首次是单位图形脱焦性脱焦性生成对抗网络(Defocusgan)。拟议的网络可以学习不同地区的消灭并恢复现实的细节。我们提出了一个散焦对抗性损失,以指导这一训练过程。竞争性的实验结果证实,使用可学习的模糊内核,生成的散焦图可以实现与监督方法相当的结果。在单位图形脱焦的任务中,所提出的方法可实现最先进的结果,尤其是感知质量的显着改善,而PSNR达到25.56 dB,而LPIPS达到0.111。
Recent research showed that the dual-pixel sensor has made great progress in defocus map estimation and image defocus deblurring. However, extracting real-time dual-pixel views is troublesome and complex in algorithm deployment. Moreover, the deblurred image generated by the defocus deblurring network lacks high-frequency details, which is unsatisfactory in human perception. To overcome this issue, we propose a novel defocus deblurring method that uses the guidance of the defocus map to implement image deblurring. The proposed method consists of a learnable blur kernel to estimate the defocus map, which is an unsupervised method, and a single-image defocus deblurring generative adversarial network (DefocusGAN) for the first time. The proposed network can learn the deblurring of different regions and recover realistic details. We propose a defocus adversarial loss to guide this training process. Competitive experimental results confirm that with a learnable blur kernel, the generated defocus map can achieve results comparable to supervised methods. In the single-image defocus deblurring task, the proposed method achieves state-of-the-art results, especially significant improvements in perceptual quality, where PSNR reaches 25.56 dB and LPIPS reaches 0.111.