Affiliation:
1. University of California
Abstract
Traditional fluorescence microscopy is constrained by inherent
trade-offs among resolution, field of view, and system complexity. To
navigate these challenges, we introduce a simple and low-cost
computational multi-aperture miniature microscope, utilizing a
microlens array for single-shot wide-field, high-resolution imaging.
Addressing the challenges posed by extensive view multiplexing and
non-local, shift-variant aberrations in this device, we present
SV-FourierNet, a multi-channel Fourier neural network. SV-FourierNet
facilitates high-resolution image reconstruction across the entire
imaging field through its learned global receptive field. We establish
a close relationship between the physical spatially varying
point-spread functions and the network’s learned effective receptive
field. This ensures that SV-FourierNet has effectively encapsulated
the spatially varying aberrations in our system and learned a
physically meaningful function for image reconstruction. Training of
SV-FourierNet is conducted entirely on a physics-based simulator. We
showcase wide-field, high-resolution video reconstructions on colonies
of freely moving C. elegans and imaging
of a mouse brain section. Our computational multi-aperture miniature
microscope, augmented with SV-FourierNet, represents a major
advancement in computational microscopy and may find broad
applications in biomedical research and other fields requiring compact
microscopy solutions.
Funder
National Institutes of
Health
Chan Zuckerberg Initiative
Cited by
1 articles.
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