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Automated Focus Distance Estimation for Digital Microscopy Using Deep Convolutional Neural Networks

机译:使用深卷积神经网络的数字显微镜自动聚焦距离估计

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An essential component of an automated digital microscopy system is auto focusing, which involves moving the microscope stage along the vertical axis to find the position where the underlying image is the sharpest. Auto focusing algorithms deployed in current commercially available digital microscopes cannot match the efficiency of a trained human operator. Traditionally, auto focusing has been achieved by acquiring multiple images in the vertical direction and maximising a measure of image sharpness. This paper presents a method for auto focusing based on deep convolutional neural networks (CNN). Given two images in the vertical focus stack, the CNN predicts the optimal distance the stage needs to be moved to achieve best focus, relative to the current position. The method was trained and results are demonstrated on a publicly available data set. It is shown to outperform previously published work on this data set. The compute and memory requirements of the model are shown to be ideal for deployment in an edge device with limited computing resources.
机译:自动化数字显微镜系统的基本组成部分是自动聚焦,它涉及沿垂直轴移动显微镜载物台以找到基础图像最清晰的位置。当前市售数字显微镜中部署的自动聚焦算法无法匹敌训练有素的操作员的效率。传统上,通过在垂直方向上获取多个图像并最大化图像清晰度的度量来实现自动聚焦。本文提出了一种基于深度卷积神经网络(CNN)的自动聚焦方法。给定垂直焦点堆栈中的两个图像,CNN会预测相对于当前位置,需要移动平台以实现最佳焦点的最佳距离。对该方法进行了培训,并在可公开获得的数据集上显示了结果。它的性能优于先前发布的有关此数据集的工作。该模型的计算和内存需求显示非常适合在计算资源有限的边缘设备中进行部署。

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