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Inventor profile of:

Slobodan Ilic

City:

Munich

Country:

Germany

Published Applications:

6

Last publication date:

2023-06-01

Top Assignees for applications by Slobodan Ilic

The entities that hold a legal rights for patent applications filed by inventor Ilic Slobodan:

  • SIEMENS AKTIENGESELLSCHAFT 6 Munich, Germany
  • SIEMENS AKTIENGESELLSCHAFT 3 Munchen, Germany

Recent patent applications by Ilic Slobodan

Slobodan Ilic from Munich, DE has applied for patents for these inventions. The list has both pending applications and granted patents:

#1 | 2023-06-01
US20230169677A1
Physics

Pose Estimation Method and Apparatus

#2 | 2022-03-31
US20220101639A1
Physics

Dense 6-DoF pose object detector

#3 | 2021-05-20
US20210150274A1
Physics

Object recognition from images using cad models as prior

#4 | 2020-12-03
US20200378904A1
Physics

Ascertaining the pose of an x-ray unit relative to an object on the basis of a digital model of the object

#5 | 2020-11-12
US20200357137A1
Physics

Determining a pose of an object in the surroundings of the object by means of multi-task learning

#6 | 2020-09-17
US20200294201A1
Physics

Segmenting and denoising depth images for recognition applications using generative adversarial neural networks

InventorID:

2852588 ⎘

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