IVCVOPTICSMar 24, 2020

Learning to Reconstruct Confocal Microscopy Stacks from Single Light Field Images

arXiv:2003.11004v146 citations
Originality Highly original
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This method enables real-time in vivo 3D microscopy for life sciences by drastically reducing time and storage requirements.

The paper tackles the problem of reconstructing confocal microscopy stacks from single light field images using a deep learning approach, achieving a 720-fold reduction in scan time and a 64-fold reduction in storage while maintaining high accuracy on mouse brain slice data.

We present a novel deep learning approach to reconstruct confocal microscopy stacks from single light field images. To perform the reconstruction, we introduce the LFMNet, a novel neural network architecture inspired by the U-Net design. It is able to reconstruct with high-accuracy a 112x112x57.6$μm^3$ volume (1287x1287x64 voxels) in 50ms given a single light field image of 1287x1287 pixels, thus dramatically reducing 720-fold the time for confocal scanning of assays at the same volumetric resolution and 64-fold the required storage. To prove the applicability in life sciences, our approach is evaluated both quantitatively and qualitatively on mouse brain slices with fluorescently labelled blood vessels. Because of the drastic reduction in scan time and storage space, our setup and method are directly applicable to real-time in vivo 3D microscopy. We provide analysis of the optical design, of the network architecture and of our training procedure to optimally reconstruct volumes for a given target depth range. To train our network, we built a data set of 362 light field images of mouse brain blood vessels and the corresponding aligned set of 3D confocal scans, which we use as ground truth. The data set will be made available for research purposes.

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