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High-resolution dynamic inversion imaging with motion-aberrations-free using optical flow learning networks

机译:使用光流程学习网络无运动像差的高分辨率动态反演成像

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Dynamic optical imaging (e.g. time delay integration imaging) is troubled by the motion blur fundamentally arising from mismatching between photo-induced charge transfer and optical image movements. Motion aberrations from the forward dynamic imaging link impede the acquiring of high-quality images. Here, we propose a high-resolution dynamic inversion imaging method based on optical flow neural learning networks. Optical flow is reconstructed via a multilayer neural learning network. The optical flow is able to construct the motion spread function that enables computational reconstruction of captured images with a single digital filter. This works construct the complete dynamic imaging link, involving the backward and forward imaging link, and demonstrates the capability of the back-ward imaging by reducing motion aberrations.
机译:动态光学成像(例如,时间延迟积分成像)由光学引起的电荷转移和光学图像运动之间的不匹配基本上产生的运动模糊令人困扰。来自前向动态成像链路的运动像差妨碍获得高质量图像。在这里,我们提出了一种基于光学流神经学习网络的高分辨率动态反演成像方法。通过多层神经学习网络重建光学流量。光学流能够构造运动扩展功能,其能够通过单个数字滤波器来计算捕获图像的计算重建。这作品构造了涉及后向和前向成像链路的完整动态成像链路,并通过减少运动像差来展示后段成像的能力。

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