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Inventor profile of:

Lorenzo Servadei

City:

München

Country:

Germany

Published Applications:

7

Last publication date:

2025-01-30

Recent patent applications by Servadei Lorenzo

Lorenzo Servadei from München, DE has applied for patents for these inventions. The list has both pending applications and granted patents:

#1 | 2025-01-30
US20250035748A1
Physics

APPARATUS, METHOD, RADAR SYSTEM AND ELECTRONIC DEVICE

#2 | 2025-01-30
US20250035741A1
Physics

GENERATIVE MODEL FOR GENERATING SYNTHETIC RADAR DATA

#3 | 2024-09-19
US20240310485A1
Physics

EARLY-EXIT NEURAL NETWORKS FOR RADAR PROCESSING

#4 | 2024-08-01
US20240255631A1
Physics

METHOD, APPARATUS AND COMPUTER PROGRAM FOR CLASSIFYING RADAR DATA FROM A SCENE, METHOD, APPARATUS AND COMPUTER PROGRAM FOR TRAINING ONE OR MORE NEURAL NETWORKS TO CLASSIFY RADAR DATA

#5 | 2024-01-25
US20240028962A1
Physics

TRAINING OF MACHINE-LEARNING ALGORITHM USING EXPLAINABLE ARTIFICIAL INTELLIGENCE

#6 | 2024-01-04
US20240004055A1
Physics

Radar Device and Method of Operating a Radar Device

#7 | 2023-12-07
US20230393240A1
Physics

People Counting Based on Radar Measurement

InventorID:

5927980 ⎘

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