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name:-0.012074947357178
name:-0.013027906417847
name:-0.017077922821045
Rousselle; Fabrice Patent Filings

Rousselle; Fabrice

Patent Applications and Registrations

Patent applications and USPTO patent grants for Rousselle; Fabrice.The latest application filed is for "denoising monte carlo renderings using progressive neural networks".

Company Profile
16.10.12
  • Rousselle; Fabrice - Ostermundingen CH
  • ROUSSELLE; FABRICE - MONTREAL CA
*profile and listings may contain filings by different individuals or companies with the same name. Review application materials to confirm ownership/assignment.
Patent Activity
PatentDate
Denoising Monte Carlo renderings using progressive neural networks
Grant 11,037,274 - Vogels , et al. June 15, 2
2021-06-15
Kernel-predicting convolutional neural networks for denoising
Grant 10,796,414 - Vogels , et al. October 6, 2
2020-10-06
Denoising Monte Carlo renderings using machine learning with importance sampling
Grant 10,789,686 - Vogels , et al. September 29, 2
2020-09-29
Adaptive sampling in Monte Carlo renderings using error-predicting neural networks
Grant 10,706,508 - Vogels , et al.
2020-07-07
Denoising Monte Carlo renderings using neural networks with asymmetric loss
Grant 10,699,382 - Vogels , et al.
2020-06-30
Adaptive Sampling In Monte Carlo Renderings Using Error-predicting Neural Networks
App 20200184313 - Vogels; Thijs ;   et al.
2020-06-11
Denoising Monte Carlo Renderings Using Progressive Neural Networks
App 20200184605 - Vogels; Thijs ;   et al.
2020-06-11
Multi-scale architecture of denoising monte carlo renderings using neural networks
Grant 10,672,109 - Vogels , et al.
2020-06-02
Denoising Monte Carlo Renderings Using Machine Learning With Importance Sampling
App 20200143522 - Vogels; Thijs ;   et al.
2020-05-07
Denoising monte carlo renderings using progressive neural networks
Grant 10,607,319 - Vogels , et al.
2020-03-31
Denoising Monte Carlo renderings using generative adversarial neural networks
Grant 10,586,310 - Vogels , et al.
2020-03-10
Denoising Monte Carlo renderings using machine learning with importance sampling
Grant 10,572,979 - Vogels , et al. Feb
2020-02-25
Kernel-predicting Convolutional Neural Networks For Denoising
App 20200027198 - Vogels; Thijs ;   et al.
2020-01-23
Kernel-predicting convolutional neural networks for denoising
Grant 10,475,165 - Vogels , et al. Nov
2019-11-12
Denoising Monte Carlo Renderings Using Neural Networks With Asymmetric Loss
App 20190304069 - Vogels; Thijs ;   et al.
2019-10-03
Temporal Techniques Of Denoising Monte Carlo Renderings Using Neural Networks
App 20190304067 - Vogels; Thijs ;   et al.
2019-10-03
Multi-scale Architecture Of Denoising Monte Carlo Renderings Using Neural Networks
App 20190304068 - Vogels; Thijs ;   et al.
2019-10-03
Denoising Monte Carlo Renderings Using Machine Learning With Importance Sampling
App 20180293713 - Vogels; Thijs ;   et al.
2018-10-11
Kernel-predicting Convolutional Neural Networks For Denoising
App 20180293711 - Vogels; Thijs ;   et al.
2018-10-11
Denoising Monte Carlo Renderings Using Progressive Neural Networks
App 20180293496 - Vogels; Thijs ;   et al.
2018-10-11
Denoising Monte Carlo Renderings Using Generative Adversarial Neural Networks
App 20180293712 - Vogels; Thijs ;   et al.
2018-10-11
System For Robust Denoising Of Images
App 20160098820 - ROUSSELLE; FABRICE ;   et al.
2016-04-07

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