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Nicolas Dobigeon

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RFI-DRUnet: Restoring dynamic spectra corrupted by radio frequency interference -- Application to pulsar observations

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Feb 21, 2024
Xiao Zhang, Ismaël Cognard, Nicolas Dobigeon

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Regularization by denoising: Bayesian model and Langevin-within-split Gibbs sampling

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Feb 19, 2024
Elhadji C. Faye, Mame Diarra Fall, Nicolas Dobigeon

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AE-RED: A Hyperspectral Unmixing Framework Powered by Deep Autoencoder and Regularization by Denoising

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Jul 01, 2023
Min Zhao, Jie Chen, Nicolas Dobigeon

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Guided Deep Generative Model-based Spatial Regularization for Multiband Imaging Inverse Problems

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Jun 29, 2023
Min Zhao, Nicolas Dobigeon, Jie Chen

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Normalizing flow sampling with Langevin dynamics in the latent space

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May 20, 2023
Florentin Coeurdoux, Nicolas Dobigeon, Pierre Chainais

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Plug-and-Play split Gibbs sampler: embedding deep generative priors in Bayesian inference

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Apr 21, 2023
Florentin Coeurdoux, Nicolas Dobigeon, Pierre Chainais

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Probabilistic Simplex Component Analysis by Importance Sampling

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Feb 22, 2023
Nerya Granot, Tzvi Diskin, Nicolas Dobigeon, Ami Wiesel

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Sliced-Wasserstein normalizing flows: beyond maximum likelihood training

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Jul 12, 2022
Florentin Coeurdoux, Nicolas Dobigeon, Pierre Chainais

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Learning Optimal Transport Between two Empirical Distributions with Normalizing Flows

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Jul 05, 2022
Florentin Coeurdoux, Nicolas Dobigeon, Pierre Chainais

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CD-GAN: a robust fusion-based generative adversarial network for unsupervised change detection between heterogeneous images

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Mar 02, 2022
Jin-Ju Wang, Nicolas Dobigeon, Marie Chabert, Ding-Cheng Wang, Jie Huang, Ting-Zhu Huang

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