Shuohang YangJian GaoJiayi ZhangChao Xu
Wrapped phase denoising is a crucial step in the InSAR data processing workflow. Traditional heuristic algorithms overly rely on designers' experience and struggle to cope with complex and variable noise environments. In contrast, the CNN and GAN methods widely used in recent years have brought about challenges such as excessive smoothing or difficulties in training. This letter introduces a denoising method for wrapped phase based on the diffusion model. The approach comprises a forward and reverse process, with its essence lying in training a noise removal network. This network gradually restores random noise to its corresponding clean phase using noise phase as a conditional input. Furthermore, a novel conditional input scheme based on the sine and cosine of the phase enhances the training and sampling processes. The experimental results demonstrate that the method presented in this letter outperforms the other three methods in both simulated and real scenarios. Specifically, in the denoising of real interferometric phases (size 512×512), the residue removal rate reaches 99.71%, showcasing remarkable denoising performance.
Jie ChenKeke LiuYong KongDawei ZhangSonglin Zhuang
Hojat AsgariandehkordiSobhan GoudarziAdrian BasarabHassan Rivaz
Andreas LugmayrMartin DanelljanAndrés RomeroFisher YuRadu TimofteLuc Van Gool
Jiahang CaoZiqing WangHanzhong GuoHao ChengQiang ZhangRenjing Xu