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Digital Holographic Interferometry without Phase Unwrapping by a Convolutional Neural Network for Concentration Measurements in Liquid Samples

机译:数字全息干涉测量法没有卷积神经网络的相位展开,用于液体样品中的浓度测量

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摘要

Convolutional neural networks (CNNs) and digital holographic interferometry (DHI) can be combined to improve the calculation efficiency and to simplify the procedures of many DHI applications. In DHI, for the measurements of concentration differences between liquid samples, two or more holograms are compared to find the difference phases among them, and then to estimate the concentration values. However, liquid samples with high concentration difference values are difficult to calculate using common phase unwrapping methods as they have high spatial frequencies. In this research, a new method to skip the phase unwrapping process in DHI, based on CNNs, is proposed. For this, images acquired by Guerrero-Mendez et al. (Metrology and Measurement Systems 24, 19–26, 2017) were used to train the CNN, and a multiple linear regression algorithm was fitted to estimate the concentration values for liquid samples. In addition, new images were recorded to evaluate the performance of the proposed method. The proposed method reached an accuracy of 0.0731%, and a precision of ±0.0645. The data demonstrated a high repeatability of 0.9986, with an operational range from 0.25 gL−1 to 1.5 gL−1. The proposed method was performed with liquid samples in a cylindrical glass.
机译:可以组合卷积神经网络(CNNS)和数字全息干涉测量(DHI)以提高计算效率,并简化许多DHI应用程序的过程。在DHI中,为了测量液体样品之间的浓度差异,将两个或更多个全息图进行比较,以找到它们中的差异相位,然后估计浓度值。然而,难以使用普通相位展开方法计算具有高浓度差值的液体样品,因为它们具有高空间频率。在该研究中,提出了一种基于CNNS跳过DHI的相位展开过程的新方法。为此,Guerrero-Mendez等人获取的图像。 (Metrology和测量系统24,19-26,2017)用于训练CNN,并且装配多元线性回归算法以估计液体样品的浓度值。此外,记录了新的图像以评估所提出的方法的性能。该方法达到0.0731%的精度,精度为±0.0645。数据表现出高0.9986的高可重复性,操作范围为0.2511至1.5 GL-1。所提出的方法用圆柱形玻璃中的液体样品进行。

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