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Main Authors: Lu, Mingda, Ao, Zitian, Wang, Chao, Prasad, Sudhakar, Chan, Raymond H.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.13295
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author Lu, Mingda
Ao, Zitian
Wang, Chao
Prasad, Sudhakar
Chan, Raymond H.
author_facet Lu, Mingda
Ao, Zitian
Wang, Chao
Prasad, Sudhakar
Chan, Raymond H.
contents For the 3D localization problem using point spread function (PSF) engineering, we propose a novel enhancement of our previously introduced localization neural network, LocNet. The improved network is a physics-informed neural network (PINN) that we call PiLocNet. Previous works on the localization problem may be categorized separately into model-based optimization and neural network approaches. Our PiLocNet combines the unique strengths of both approaches by incorporating forward-model-based information into the network via a data-fitting loss term that constrains the neural network to yield results that are physically sensible. We additionally incorporate certain regularization terms from the variational method, which further improves the robustness of the network in the presence of image noise, as we show for the Poisson and Gaussian noise models. This framework accords interpretability to the neural network, and the results we obtain show its superiority. Although the paper focuses on the use of single-lobe rotating PSF to encode the full 3D source location, we expect the method to be widely applicable to other PSFs and imaging problems that are constrained by known forward processes.
format Preprint
id arxiv_https___arxiv_org_abs_2410_13295
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle PiLocNet: Physics-informed neural network on 3D localization with rotating point spread function
Lu, Mingda
Ao, Zitian
Wang, Chao
Prasad, Sudhakar
Chan, Raymond H.
Machine Learning
Artificial Intelligence
Computer Vision and Pattern Recognition
Optics
For the 3D localization problem using point spread function (PSF) engineering, we propose a novel enhancement of our previously introduced localization neural network, LocNet. The improved network is a physics-informed neural network (PINN) that we call PiLocNet. Previous works on the localization problem may be categorized separately into model-based optimization and neural network approaches. Our PiLocNet combines the unique strengths of both approaches by incorporating forward-model-based information into the network via a data-fitting loss term that constrains the neural network to yield results that are physically sensible. We additionally incorporate certain regularization terms from the variational method, which further improves the robustness of the network in the presence of image noise, as we show for the Poisson and Gaussian noise models. This framework accords interpretability to the neural network, and the results we obtain show its superiority. Although the paper focuses on the use of single-lobe rotating PSF to encode the full 3D source location, we expect the method to be widely applicable to other PSFs and imaging problems that are constrained by known forward processes.
title PiLocNet: Physics-informed neural network on 3D localization with rotating point spread function
topic Machine Learning
Artificial Intelligence
Computer Vision and Pattern Recognition
Optics
url https://arxiv.org/abs/2410.13295