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Adaptive frequency filtering based on convolutional neural networks in off-axis digital holographic microscopy

机译:离轴数字全息显微镜中基于卷积神经网络的自适应频率滤波

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摘要

Digital holographic microscopy (DHM) as a label-free quantitative imaging tool has been widely used to investigate the morphology of living cells dynamically. In the off-axis DHM, the spatial filtering in the frequency spectrum of the hologram is vital to the quality of the reconstructed images. In this paper, we propose an adaptive spatial filtering approach based on convolutional neural networks (CNN) to automatically extracts the optimal shape of frequency components. For achieving robust and precise recognition performance, the net model is trained by using the tens of thousands of frequency spectrums with a variety of specimens and imaging conditions. The experimental results demonstrate that the trained network produce an adaptive spatial filtering window which can accurately select the frequency components of the object term and eliminate the frequency components of the interference terms, especially the coherent noise that overlaps with the object term in the spatial frequency domain. We find that the proposed approach has a fast, robust, and outstanding frequency filtering capability without any manual intervention and initial input parameters compared to previous techniques. Furthermore, the applicability of the proposed method in off-axis DHM for dynamic analysis is demonstrated by real-time monitoring the morphologic changes of living MLO-Y4 cells that are constantly subject to Fluid Shear Stress (FSS).
机译:数字全息显微镜(DHM)作为一种无标记的定量成像工具已被广泛用于动态研究活细胞的形态。在离轴DHM中,全息图频谱中的空间滤波对于重建图像的质量至关重要。在本文中,我们提出一种基于卷积神经网络(CNN)的自适应空间滤波方法,以自动提取频率分量的最佳形状。为了获得鲁棒且精确的识别性能,通过使用具有各种样本和成像条件的数以万计的频谱来训练网络模型。实验结果表明,训练后的网络产生了一个自适应的空间滤波窗口,该窗口可以准确地选择对象项的频率分量,并消除干扰项的频率分量,尤其是在空间频域中与对象项重叠的相干噪声。 。我们发现,与以前的技术相比,该方法具有快速,鲁棒和出色的频率滤波能力,而无需任何人工干预和初始输入参数。此外,通过实时监测不断受到流体剪切应力(FSS)的活MLO-Y4细胞的形态变化,证明了该方法在离轴DHM中进行动态分析的适用性。

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