用于数字斑点模式干涉测量的反噪声设计残差相位解包神经网络

Optics Pub Date : 2024-01-19 DOI:10.3390/opt5010003
Biao Wang, Xiaoling Cao, Meiling Lan, Chang Wu, Yonghong Wang
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引用次数: 0

摘要

DSPI (数字斑点模式干涉仪)是一种非破坏性光学测量技术,通过相位解包获得物体的相位信息。传统的相位解包算法取决于图像质量,需要进行滤波和去噪等预处理。此外,解包时间受图像大小的影响很大。在这项研究中,我们结合残差网络和 U-Net 网络,提出了一种新的基于深度学习的相位解包算法。此外,我们还根据相机特性,将改进的 SSIM 函数作为损失函数。实验结果表明,与传统算法相比,所提出的方法在高噪声相位解包图中实现了更高的质量,SSIM 值始终高于 0.98。此外,我们还对网络进行了图像拼接,以处理各种尺寸的地图,即使是较大的图像,解包时间也保持在 1 秒左右。总之,我们提出的网络能够实现高效、准确的相位解包。
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An Anti-Noise-Designed Residual Phase Unwrapping Neural Network for Digital Speckle Pattern Interferometry
DSPI (Digital Speckle Pattern Interferometry) is a non-destructive optical measurement technique that obtains phase information of an object through phase unwrapping. Traditional phase unwrapping algorithms depend on the quality of the images, which demands preprocessing such as filtering and denoising. Moreover, the unwrapping time is highly influenced by the size of the images. In this study, we proposed a new deep learning-based phase unwrapping algorithm combining the residual network and U-Net network. Additionally, we incorporated an improved SSIM function as the loss function based on camera characteristics. The experimental results demonstrated that the proposed method achieved higher quality in highly noisy phase unwrapping maps compared to traditional algorithms, with SSIM values consistently above 0.98. In addition, we applied image stitching to the network to process maps of various sizes and the unwrapping time remained around 1 s even for larger images. In conclusion, our proposed network is able to achieve efficient and accurate phase unwrapping.
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