Modelling Point Spread Function in Fluorescence Microscopy with a Sparse Combination of Gaussian Mixture: Trade-off between Accuracy and Efficiency
Denis K. Samuylov, Prateek Purwar, G\'abor Sz\'ekely, and Gr\'egory, Paul

TL;DR
This paper introduces a Gaussian mixture model for the point spread function in fluorescence microscopy, balancing accuracy and computational efficiency through a sparsity-based optimization approach.
Contribution
It proposes a novel Gaussian mixture PSF model with a variational calibration method that enables a controllable trade-off between accuracy and efficiency.
Findings
Improved point source localization accuracy in fluorescence microscopy.
Effective balance between model complexity and computational cost.
Validated on synthetic and real microscopy data.
Abstract
Deblurring is a fundamental inverse problem in bioimaging. It requires modelling the point spread function (PSF), which captures the optical distortions entailed by the image formation process. The PSF limits the spatial resolution attainable for a given microscope. However, recent applications require a higher resolution, and have prompted the development of super-resolution techniques to achieve sub-pixel accuracy. This requirement restricts the class of suitable PSF models to analog ones. In addition, deblurring is computationally intensive, hence further requiring computationally efficient models. A custom candidate fitting both requirements is the Gaussian model. However, this model cannot capture the rich tail structures found in both theoretical and empirical PSFs. In this paper, we aim at improving the reconstruction accuracy beyond the Gaussian model, while preserving its…
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