光学
相(物质)
相位展开
计算机科学
干涉测量
物理
量子力学
作者
Ziheng Zhang,Xiaoxu Wang,Chengxiu Liu,Ziyu Han,Qingxiong Xiao,Zhilin Zhang,Wenlu Feng,Mingyong Liu,Qiuyu Lu
出处
期刊:Optics Express
[Optica Publishing Group]
日期:2024-04-11
卷期号:32 (9): 15410-15410
被引量:1
摘要
Phase unwrapping is a crucial step in obtaining the final physical information in the field of optical metrology. Although good at dealing with phase with discontinuity and noise, most deep learning-based spatial phase unwrapping methods suffer from the complex model and unsatisfactory performance, partially due to simple noise type for training datasets and limited interpretability. This paper proposes a highly efficient and robust spatial phase unwrapping method based on an improved SegFormer network, SFNet. The SFNet structure uses a hierarchical encoder without positional encoding and a decoder based on a lightweight fully connected multilayer perceptron. The proposed method utilizes the self-attention mechanism of the Transformer to better capture the global relationship of phase changes and reduce errors in the phase unwrapping process. It has a lower parameter count, speeding up the phase unwrapping. The network is trained on a simulated dataset containing various types of noise and phase discontinuity. This paper compares the proposed method with several state-of-the-art deep learning-based and traditional methods in terms of important evaluation indices, such as RMSE and PFS, highlighting its structural stability, robustness to noise, and generalization.
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