深度学习空间相位展开:比较综述

Kaiqiang Wang, Q. Kemao, Jianglei Di, Jianlin Zhao
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引用次数: 18

摘要

摘要相位展开是许多光学成像和计量技术中不可缺少的步骤。深度学习的快速发展将思想带入了阶段展开。在过去的四年中,各种相位数据集生成方法和涉及深度学习的空间相位展开方法迅速涌现。然而,这些方法是单独提出和分析的,使用不同的策略、神经网络和数据集,并应用于不同的场景。因此,有必要将这些涉及深度学习的方法与传统方法在相同背景下进行详细的比较。我们首先将相位数据集生成方法分为随机矩阵放大、高斯矩阵叠加和Zernike多项式叠加,然后将涉及深度学习的相位展开方法分为深度学习执行的回归、深度学习执行的包裹计数和深度学习辅助去噪。对于阶段数据集生成方法,详细比较了数据集的丰富度和训练网络的泛化能力。此外,在理想情况、噪声情况、不连续情况和混叠情况下,对涉及深度学习的方法与传统方法进行了分析和比较。最后,对不同情况下的最佳方法提出了建议,并对涉及深度学习的空间相位展开方法在数据集生成方法、神经网络结构、泛化能力增强和神经网络训练策略等方面提出了潜在的发展方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning spatial phase unwrapping: a comparative review
Abstract. Phase unwrapping is an indispensable step for many optical imaging and metrology techniques. The rapid development of deep learning has brought ideas to phase unwrapping. In the past four years, various phase dataset generation methods and deep-learning-involved spatial phase unwrapping methods have emerged quickly. However, these methods were proposed and analyzed individually, using different strategies, neural networks, and datasets, and applied to different scenarios. It is thus necessary to do a detailed comparison of these deep-learning-involved methods and the traditional methods in the same context. We first divide the phase dataset generation methods into random matrix enlargement, Gauss matrix superposition, and Zernike polynomials superposition, and then divide the deep-learning-involved phase unwrapping methods into deep-learning-performed regression, deep-learning-performed wrap count, and deep-learning-assisted denoising. For the phase dataset generation methods, the richness of the datasets and the generalization capabilities of the trained networks are compared in detail. In addition, the deep-learning-involved methods are analyzed and compared with the traditional methods in ideal, noisy, discontinuous, and aliasing cases. Finally, we give suggestions on the best methods for different situations and propose the potential development direction for the dataset generation method, neural network structure, generalization ability enhancement, and neural network training strategy for the deep-learning-involved spatial phase unwrapping methods.
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