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name:-0.013321876525879
name:-0.018002986907959
Ceccaldi; Pascal Patent Filings

Ceccaldi; Pascal

Patent Applications and Registrations

Patent applications and USPTO patent grants for Ceccaldi; Pascal.The latest application filed is for "machine learning for automatic detection of intracranial hemorrhages with uncertainty measures from ct images".

Company Profile
15.10.15
  • Ceccaldi; Pascal - New York NY
  • Ceccaldi; Pascal - Princeton NJ
*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
Machine Learning For Automatic Detection Of Intracranial Hemorrhages With Uncertainty Measures From Ct Images
App 20220293247 - Gibson; Eli ;   et al.
2022-09-15
Automatic Detection Of Lesions In Medical Images Using 2d And 3d Deep Learning Networks
App 20220189028 - Yoo; Youngjin ;   et al.
2022-06-16
Protocol-Aware Tissue Segmentation in Medical Imaging
App 20220164959 - Mostapha; Mahmoud ;   et al.
2022-05-26
Protocol-Aware Tissue Segmentation in Medical Imaging
App 20220156938 - Mostapha; Mahmoud ;   et al.
2022-05-19
Protocol-aware tissue segmentation in medical imaging
Grant 11,288,806 - Mostapha , et al. March 29, 2
2022-03-29
Method and system for image analysis
Grant 11,282,203 - Ceccaldi , et al. March 22, 2
2022-03-22
Automated Estimation Of Midline Shift In Brain Ct Images
App 20220067929 - Nguyen; Nguyen ;   et al.
2022-03-03
Saliency mapping by feature reduction and perturbation modeling in medical imaging
Grant 11,263,744 - Yoo , et al. March 1, 2
2022-03-01
Saliency Mapping By Feature Reduction And Perturbation Modeling In Medical Imaging
App 20210174497 - Yoo; Youngjin ;   et al.
2021-06-10
Method and system for generating a confidence score using deep learning model
Grant 10,997,717 - Ceccaldi , et al. May 4, 2
2021-05-04
Protocol-Aware Tissue Segmentation in Medical Imaging
App 20210097690 - Mostapha; Mahmoud ;   et al.
2021-04-01
Method And System For Image Analysis
App 20210042930 - Ceccaldi; Pascal ;   et al.
2021-02-11
Artifact reduction by image-to-image network in magnetic resonance imaging
Grant 10,852,379 - Chen , et al. December 1, 2
2020-12-01
Method, learning apparatus, and medical imaging apparatus for registration of images
Grant 10,832,392 - Ceccaldi , et al. November 10, 2
2020-11-10
Image standardization using generative adversarial networks
Grant 10,753,997 - Odry , et al. A
2020-08-25
Method And System For Image Analysis
App 20200250812 - Kind Code
2020-08-06
Deep reinforcement learning for recursive segmentation
Grant 10,733,788 - Ceccaldi , et al.
2020-08-04
Motion artifact reduction of magnetic resonance images with an adversarial trained network
Grant 10,698,063 - Braun , et al.
2020-06-30
Method, Learning Apparatus, And Medical Imaging Apparatus For Registration Of Images
App 20200202507 - Ceccaldi; Pascal ;   et al.
2020-06-25
Protocol independent image processing with adversarial networks
Grant 10,624,558 - Ceccaldi , et al.
2020-04-21
Artifact Reduction by Image-to-Image Network in Magnetic Resonance Imaging
App 20190377047 - Chen; Xiao ;   et al.
2019-12-12
Deep Reinforcement Learning For Recursive Segmentation
App 20190287292 - Ceccaldi; Pascal ;   et al.
2019-09-19
Motion Artifact Reduction Of Magnetic Resonance Images With An Adversarial Trained Network
App 20190128989 - Braun; Sandro ;   et al.
2019-05-02
Image Standardization Using Generative Adversarial Networks
App 20190049540 - Odry; Benjamin L. ;   et al.
2019-02-14
Protocol Independent Image Processing With Adversarial Networks
App 20190046068 - Ceccaldi; Pascal ;   et al.
2019-02-14

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