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Deep Learning For Fast Image Reconstruction of Fourier Ptychographic Microscopy with Expanded Frequency Spectrum

机译:扩展频谱快速图像重建快速图像重建的深度学习

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Fourier Ptychographic Microscopy (FPM) is a super-resolution microscopy technology, in which a set of low-resolution images containing different frequency components of the sample can be obtained by changing the angle of the light source in this technology, and then the iterative algorithm is used to reconstruct high-resolution intensity and phase information. The reconstruction usually takes a long time and is not suitable for real-time FPM imaging. It has been recognized recently that the potential fast image reconstruction algorithm is the use of deep learning algorithms. We designed a conditional generative adversarial network (cGAN) which has multi-branch input and multi-branch output which can expand the frequency spectrum of the reconstructed image very well. Based on the convolutional neural network (CNN), the brightfield and darkfield images obtained by FPM imaging can be regarded as different image features obtained by different convolutional kernel, and the skip connection of U-net can effectively utilize this information. The brightfield and darkfield images in FPM imaging are input to different branches, which can avoid missing the darkfield signal information. Importantly, the neural network we designed will continue to perform simulation process of FPM imaging from the recovered high-resolution intensity and phase to obtain low-resolution images and make them correspond one-to-one with the input low-resolution images. These corresponded images will enter loss function, making it easier for the neural network to learn relation between the low-resolution images and the high-resolution images. We validated the deep learning algorithm through simulated experimental research on biological cell imaging.
机译:傅里叶PTychographic显微镜(FPM)是一种超分辨率显微镜技术,其中通过改变本技术中的光源角度,可以通过改变迭代算法的光源的角度来获得一组包含样品的不同频率分量的低分辨率图像,然后可以获得迭代算法用于重建高分辨率强度和相位信息。重建通常需要很长时间并且不适合实时FPM成像。最近已经认识到,潜在的快速图像重建算法是使用深度学习算法。我们设计了一种有条件的生成对抗网络(CGAN),具有多分支输入和多分支输出,可以很好地扩展重建图像的频谱。基于卷积神经网络(CNN),通过FPM成像获得的BrightField和Darkfield图像可以被视为由不同的卷积内核获得的不同图像特征,并且U-Net的跳过连接可以有效地利用该信息。 FPM成像中的BrightField和Darkfield图像输入到不同的分支,可以避免缺少暗场信号信息。重要的是,我们设计的神经网络将继续从恢复的高分辨率强度和阶段执行FPM成像的模拟过程,以获得低分辨率图像,并使它们与输入的低分辨率图像一对一。这些相应的图像将进入损耗函数,使神经网络更容易学习低分辨率图像和高分辨率图像之间的关系。通过模拟生物细胞成像的模拟实验研究验证了深度学习算法。

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