Solving optical tomography with deep learning

ANNALS OF MATHEMATICAL SCIENCES AND APPLICATIONS(2022)

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摘要
This paper presents a neural network approach for solving two-dimensional optical tomography (OT) problems based on the ra-diative transfer equation. The mathematical problem of OT is to recover the optical properties of an object based on the albedo op-erator that is accessible from boundary measurements. Both the forward map from the optical properties to the albedo operator and the inverse map are high-dimensional and nonlinear. For the circular tomography geometry, a perturbative analysis shows that the forward map can be approximated by a vectorized convolution operator in the angular direction. Motivated by this, we propose effective neural network architectures for the forward and inverse maps based on convolution layers, with weights learned from train-ing datasets. Numerical results demonstrate the efficiency of the proposed neural networks.
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关键词
Inverse problems, deep learning, optical to-mography, radiative transfer equation
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