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Autofocusing in digital holography using deep learning

机译:使用深度学习进行数字全息自动对焦

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In digital holography, it is critical to know the distance in order to reconstruct the multi-sectional object. This autofocusing is traditionally solved by reconstructing a stack of in-focus and out-of-focus images and using some focus metric, such as entropy or variance, to calculate the sharpness of each reconstructed image. Then the distance corresponding to the sharpest image is determined as the focal position. This method is effective but computationally demanding and time-consuming. To get an accurate estimation, one has to reconstruct many images. Sometimes after a coarse search, a refinement is needed. To overcome this problem in autofocusing, we propose to use deep learning, i.e., a convolutional neural network (CNN), to solve this problem. Autofocusing is viewed as a classification problem, in which the true distance is transferred as a label. To estimate the distance is equated to labeling a hologram correctly. To train such an algorithm, totally 1000 holograms are captured under the same environment, i.e., exposure time, incident angle, object, except the distance. There are 5 labels corresponding to 5 distances. These data are randomly split into three datasets to train, validate and test a CNN network. Experimental results show that the trained network is capable of predicting the distance without reconstructing or knowing any physical parameters about the setup. The prediction time using this method is far less than traditional autofocusing methods.
机译:在数字全息术中,至关重要的是要知道距离,以便重建多部分物体。传统上,这种自动对焦是通过重建一堆焦点对准和焦点对准的图像并使用诸如熵或方差之类的一些焦点度量来计算每个重建图像的清晰度来解决的。然后,将与最清晰图像相对应的距离确定为焦点位置。该方法是有效的,但在计算上又费时又费力。为了获得准确的估计,必须重建许多图像。有时在粗略搜索之后,需要进行细化。为了克服自动对焦中的这个问题,我们建议使用深度学习(即卷积神经网络(CNN))来解决此问题。自动对焦被视为分类问题,其中真实距离作为标签进行传输。估计距离等于正确标记全息图。为了训练这样的算法,在相同的环境下,即距离,曝光时间,入射角,物体除外,总共要捕获1000张全息图。有5个标签,对应5个距离。这些数据被随机分为三个数据集,以训练,验证和测试CNN网络。实验结果表明,训练后的网络能够预测距离,而无需重建或了解有关该设置的任何物理参数。使用这种方法的预测时间远远少于传统的自动聚焦方法。

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