By adopting popular pixel-wise loss, existing methods for defocus deblurring heavily rely on well aligned training image pairs. Although training pairs of ground-truth and blurry images are carefully collected, e.g., DPDD dataset, misalignment is inevitable between training pairs, making existing methods possibly suffer from deformation artifacts. In this paper, we propose a joint deblurring and reblurring learning (JDRL) framework for single image defocus deblurring with misaligned training pairs. Generally, JDRL consists of a deblurring module and a spatially invariant reblurring module, by which deblurred result can be adaptively supervised by ground-truth image to recover sharp textures while maintaining spatial consistency with the blurry image. First, in the deblurring module, a bi-directional optical flow-based deformation is introduced to tolerate spatial misalignment between deblurred and ground-truth images. Second, in the reblurring module, deblurred result is reblurred to be spatially aligned with blurry image, by predicting a set of isotropic blur kernels and weighting maps. Moreover, we establish a new single image defocus deblurring (SDD) dataset, further validating our JDRL and also benefiting future research. Our JDRL can be applied to boost defocus deblurring networks in terms of both quantitative metrics and visual quality on DPDD, RealDOF and our SDD datasets.
翻译:通过采用流行的像素错失,现有的脱尘方法在很大程度上依赖于对齐的培训图像配对。虽然对地图和模糊图像的培训配对是精心收集的,例如DPDD数据集,但是在培训配对之间,错配是不可避免的,使现有方法可能受到变形文物的破坏。在本文件中,我们建议为单一图像的脱色和重熔学习框架(JDRL)引入一个单一图像的混合脱色框架(JDRL),与错误的训练配对。一般而言,JDRL是一个分流模块和一个空间变异的重新布局模块,通过这种模块,在地面变异的结果可以适应性地加以监督,由地图图像组合来恢复锐利的纹质,同时保持与模糊的图像相容。首先,在分流模块中,引入双向光学光学流(JDRL)的变异度(JDR)和地图谱图像的进一步错位调。第二,在再调整模块中,RBRRRRRRR的递结果的变压和变压结果将重新定位与SDRDL的变压。