Spherical image processing has been widely applied in many important fields, such as omnidirectional vision for autonomous cars, global climate modelling, and medical imaging. It is non-trivial to extend an algorithm developed for flat images to the spherical ones. In this work, we focus on the challenging task of spherical image inpainting with deep learning-based regularizer. Instead of a naive application of existing models for planar images, we employ a fast directional spherical Haar framelet transform and develop a novel optimization framework based on a sparsity assumption of the framelet transform. Furthermore, by employing progressive encoder-decoder architecture, a new and better-performed deep CNN denoiser is carefully designed and works as an implicit regularizer. Finally, we use a plug-and-play method to handle the proposed optimization model, which can be implemented efficiently by training the CNN denoiser prior. Numerical experiments are conducted and show that the proposed algorithms can greatly recover damaged spherical images and achieve the best performance over purely using deep learning denoiser and plug-and-play model.
翻译:球形图像处理已被广泛应用于许多重要领域,例如自主汽车的全向视觉、全球气候建模和医学成像等。将平面图像的算法扩展至球形图像是非三相不相干的。 在这项工作中,我们侧重于球形图像与深层学习的常规化器相绘这一具有挑战性的任务。我们不是天真地将现有模型应用于平面图像,而是采用快速方向球形Haar框架板变换并开发基于框架变换的广度假设的新颖优化框架。此外,通过使用渐进式的编码解码器结构,精心设计了一个新的和完善的深层CNN解码器作为隐含的常规化器。最后,我们使用插接和游戏法来处理拟议的优化模型,通过在CNN前培训CNN解调器可以有效实施。进行了数值实验,并表明拟议的算法可以大大恢复受损的球形图像,并实现纯利用深学习解析和插和游戏模型的最佳性表现。