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Automated digital holographic image reconstruction with deep convolutional neural networks

机译:深度卷积神经网络的自动数字全息图像重建

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In off-axis digital holographic microscopy, a camera records the spatial interference intensity pattern between light scattered from the specimen and the unperturbed reference light. Digital propagation using the numerical reconstruction algorithm allows both phase-contrast and amplitude-contrast images of the sample to be retrieved. This is possible when the exact distance between the image sensor (such as CCD) plane and image plane is provided. In this paper, we give an overview of our work on a deep-learning convolutional neural network with a regression layer as the top layer to estimate the best focus distance. The experimental results obtained using microsphere beads and red blood cells show that the proposed method can accurately estimate the propagation distance from a filtered hologram. This method can significantly accelerate the numerical reconstruction time since the correct focus is provided by the CNN model with no need for digital propagation at different distances.
机译:在离轴数字全息显微镜中,照相机记录从标本散射的光与不受干扰的参考光之间的空间干涉强度模式。使用数值重建算法的数字传播可以检索样品的相位对比图像和幅度对比图像。当提供图像传感器(例如CCD)平面和图像平面之间的精确距离时,这是可能的。在本文中,我们对深度学习卷积神经网络的工作进行了概述,其中以回归层为顶层来估计最佳聚焦距离。使用微球珠和红细胞获得的实验结果表明,所提出的方法可以从滤波后的全息图准确估计传播距离。由于CNN模型提供了正确的焦点,而无需在不同距离进行数字传播,因此该方法可以大大加快数值重建的时间。

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