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Inventor profile of:

Yuchi Wang

City:

Ann Arbor, Michigan

Country:

United States

Published Applications:

6

Last publication date:

2025-12-11

Top Assignees for applications by Yuchi Wang

The entities that hold a legal rights for patent applications filed by inventor Wang Yuchi:

  • Waymo LLC 3 Mountain View, CA United States

Recent patent applications by Wang Yuchi

Yuchi Wang from Ann Arbor, US has applied for patents for these inventions. The list has both pending applications and granted patents:

#1 | 2025-12-11
US20250377464A1
Physics

Differential Methods for Environment Estimation, Lidar Impairment Detection, and Filtering

#2 | 2024-06-20
US20240201391A1
Physics

Differential Methods for Environment Estimation, Lidar Impairment Detection, and Filtering

#3 | 2023-08-24
US20230264715A1
Performing operations; transporting

Puddle occupancy grid for autonomous vehicles

#4 | 2022-12-08
US20220390612A1
Physics

DETERMINATION OF ATMOSPHERIC VISIBILITY IN AUTONOMOUS VEHICLE APPLICATIONS

#5 | 2022-06-16
US20220185313A1
Performing operations; transporting

Puddle occupancy grid for autonomous vehicles

#6 | 2021-11-18
US20210354723A1
Performing operations; transporting

DETERMINING PUDDLE SEVERITY FOR AUTONOMOUS VEHICLES

InventorID:

5243020 ⎘

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