Abstract / truncated to 115 words (read the full abstract)

In the era of artificial intelligence, there has been a growing consensus that solutions to complex science and engineering problems require novel methodologies that can integrate interpretable physics-based modeling approaches with machine learning techniques, from stochastic optimization to deep neural networks. This thesis aims to develop new methodological and applied frameworks for combining the advantages of physics-based modeling and machine learning, with special attention to two important signal processing tasks: solving inverse problems in hyperspectral imaging and detecting changepoints in time series. The first part of the thesis addresses learning priors in model-based optimization for solving inverse problems in hyperspectral imaging systems. First, we introduce a tuning-free Plug-and-Play algorithm for hyperspectral image deconvolution (HID). Specifically, ... toggle 6 keywords

physics-based modeling machine learning hyperspectral images inverse problems changepoint detection riemannian manifolds.

Information

Author
Xiuheng Wang
Institution
Université Côte d'Azur
Supervisor
Publication Year
2024
Upload Date
March 14, 2025

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