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Spherical object segmentation in digital holographic microscopy by deep-learning

机译:通过深度学习在数字全息显微镜中进行球体分割

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Digital holographic microscopy can image both absorbing and translucent objects. Due to the presence of twin-images and out-of-focus objects, the task of segmenting the objects from a back-propagated hologram is challenging. This paper investigates the use of deep neural networks to combine the real and imaginary parts of the back-propagated wave and produce a segmentation. The network, trained with pairs of back-propagated simulated holograms and ground truth segmentations, is shown to perform well even in the case of a mismatch between the defocus distance of the holograms used during the training step and the actual defocus distance of the holograms at test time.
机译:数字全息显微镜可以对吸收性和半透明的物体成像。由于存在双图像和散焦对象,因此从反向传播的全息图中分割对象的任务非常具有挑战性。本文研究了深度神经网络的使用,以结合反向传播波的实部和虚部并产生分段。即使在训练步骤中使用的全息图的散焦距离与实际的全息图实际散焦距离不匹配的情况下,经成对的反向传播模拟全息图和地面真相分割训练的网络也表现良好。测试时间。

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