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DeepVID: A Self-supervised Deep Learning Framework for Two-photon Voltage Imaging Denoising

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Abstract

High-speed population-level voltage imaging is suffered from the shot noise limit. We developed a self-supervised deep learning framework for voltage imaging denoising (DeepVID) without the need for any ground-truth high-SNR data.

© 2022 The Author(s)

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