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Deep learning-based super-resolution in coherent imaging systems

机译:相干成像系统中基于深度学习的超分辨率

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摘要

We present a deep learning framework based on a generative adversarial network (GAN) to perform super-resolution in coherent imaging systems. We demonstrate that this framework can enhance the resolution of both pixel size-limited and diffraction-limited coherent imaging systems. The capabilities of this approach are experimentally validated by super-resolving complex-valued images acquired using a lensfree on-chip holographic microscope, the resolution of which was pixel size-limited. Using the same GAN-based approach, we also improved the resolution of a lens-based holographic imaging system that was limited in resolution by the numerical aperture of its objective lens. This deep learning-based super-resolution framework can be broadly applied to enhance the space-bandwidth product of coherent imaging systems using image data and convolutional neural networks, and provides a rapid, non-iterative method for solving inverse image reconstruction or enhancement problems in optics.
机译:我们提出了一个基于生成对抗网络(GAN)的深度学习框架,以在相干成像系统中执行超分辨率。我们证明了此框架可以提高像素大小受限和衍射受限相干成像系统的分辨率。这种方法的功能已通过使用无透镜芯片全息照相显微镜(其分辨率受像素大小限制)获得的超分辨率复数值图像进行了实验验证,从而得到了验证。使用相同的基于GAN的方法,我们还提高了基于镜头的全息成像系统的分辨率,该系统的分辨率受到其物镜数值孔径的限制。这种基于深度学习的超分辨率框架可以广泛地用于增强使用图像数据和卷积神经网络的相干成像系统的空间带宽乘积,并为解决逆图像重建或增强中的问题提供了一种快速,非迭代的方法。光学。

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