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DeepDensity: Convolutional neural network based estimation of local fringe pattern density

机译:深度:基于卷积神经网络的局部条纹图案密度估计

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摘要

Fringe pattern based measurement techniques are crucial both in macroscale, e.g., fringe projection profilometry, and microscale, e.g., label-free quantitative phase microscopy. Accurate estimation of the local fringe density map can significantly facilitate almost all stages of fringe pattern analysis process. Example includes: (1) using density map as a determinant for the selection of the proper window size in windowed Fourier transform method, (2) guiding the decomposition process in empirical mode decomposition, (3) improving the phase unwrapping accuracy by providing additional reliability indicators, (4) guiding phase estimation process in regularized phase tracking. For these reasons, the accurate and robust estimation of local fringe density map is of high importance and can boost fringe pattern analysis on different stages of processing path, resulting in increased capacity of the full-field noncontact/noninvasive optical measurement system. In this paper, we propose a new, accurate, robust, and fast numerical solution for local fringe density map estimation called DeepDensity. DeepDensity is based on the convolutional neural network and deep learning, making it significantly outperform other conventional solutions to this problem. Numerical simulations and experimental results corroborate the effectiveness of the proposed DeepDensity.
机译:基于条纹图案的测量技术在Macroscale,例如条纹投影轮廓测定法和微观尺寸,例如无标记的定量相显微镜中至关重要。局部条纹密度图的精确估计可以显着促进几乎所有条纹图案分析过程的阶段。示例包括:(1)使用密度图作为选择窗口傅立叶变换方法中的适当窗口大小的决定因素,(2)通过提供额外的可靠性来提高相位展开精度的分解过程指标,(4)正则阶段跟踪中的指导阶段估计过程。由于这些原因,局部条纹密度图的准确和稳健估计很高,并且可以在处理路径的不同阶段提高条纹图案分析,导致全场非接触/非侵入光学测量系统的容量增加。在本文中,我们为局部条纹密度图估算提出了一种新的,准确,坚固,最快速的数控估计,称为深度。深度是基于卷积神经网络和深度学习,使其显着优于此问题的其他传统解决方案。数值模拟与实验结果证实了拟议的深度的有效性。

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