Patent Assignment Details
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For pending or abandoned applications please consult USPTO staff.
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Reel/Frame: | 061494/0163 | |
| Pages: | 3 |
| | Recorded: | 10/21/2022 | | |
Attorney Dkt #: | OCTOBER 2022 TRANSFER |
Conveyance: | ASSIGNMENT OF ASSIGNORS INTEREST (SEE DOCUMENT FOR DETAILS). |
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Total properties:
6
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Patent #:
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Issue Dt:
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12/06/2022
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Application #:
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16674425
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Filing Dt:
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11/05/2019
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Publication #:
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Pub Dt:
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05/07/2020
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Title:
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PRIVACY-PRESERVING VISUAL RECOGNITION VIA ADVERSARIAL LEARNING
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Patent #:
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Issue Dt:
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12/06/2022
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Application #:
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16696087
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Filing Dt:
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11/26/2019
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Publication #:
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Pub Dt:
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03/26/2020
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Title:
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LEARNING TO SIMULATE
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Patent #:
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Issue Dt:
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12/06/2022
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Application #:
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16787774
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Filing Dt:
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02/11/2020
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Publication #:
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Pub Dt:
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09/10/2020
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Title:
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COMPLEX SYSTEM ANOMALY DETECTION BASED ON DISCRETE EVENT SEQUENCES
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Patent #:
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Issue Dt:
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12/06/2022
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Application #:
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16918353
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Filing Dt:
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07/01/2020
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Publication #:
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Pub Dt:
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01/28/2021
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Title:
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WORD-OVERLAP-BASED CLUSTERING CROSS-MODAL RETRIEVAL
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Patent #:
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Issue Dt:
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12/06/2022
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Application #:
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16992395
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Filing Dt:
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08/13/2020
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Publication #:
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Pub Dt:
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03/04/2021
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Title:
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STRUCTURAL GRAPH NEURAL NETWORKS FOR SUSPICIOUS EVENT DETECTION
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Patent #:
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Issue Dt:
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12/06/2022
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Application #:
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16995052
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Filing Dt:
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08/17/2020
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Publication #:
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Pub Dt:
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03/04/2021
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Title:
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ASYMMETRICALLY HIERARCHICAL NETWORKS WITH ATTENTIVE INTERACTIONS FOR INTERPRETABLE REVIEW-BASED RECOMMENDATION
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Assignee
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7-1, SHIBA 5-CHOME |
MINATO-KU |
TOKYO, JAPAN 1088001 |
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Correspondence name and address
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NEC LABORATORIES AMERICA, INC.
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4 INDEPENDENCE WAY
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SUITE 200
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PRINCETON, NJ 08540
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