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Inventor profile of:

Raphael Tessmer

City:

Pasadena, California

Country:

United States

Published Applications:

7

Last publication date:

2025-11-13

Recent patent applications by Tessmer Raphael

Raphael Tessmer from Pasadena, US has applied for patents for these inventions. The list has both pending applications and granted patents:

#1 | 2025-11-13
US20250347380A1
Mechanical engineering

SYSTEM AND METHOD OF MULTI-SENSOR MAPPING OF AN ENVIRONMENT

#2 | 2025-04-24
US20250130591A1
Physics

SYSTEMS AND METHODS FOR AUTONOMOUS DRIVING IF A ROBOT USING DIGITAL MAP

#3 | 2025-04-24
US20250130590A1
Physics

SYSTEM AND METHOD FOR REALTIME FEEDBACK LOOP FOR MULTI-SENSOR APPLICATIONS

#4 | 2025-04-24
US20250130578A1
Physics

SYSTEM AND METHOD FOR AUTOMATIC ADJUSTMENT OF ROBOT REFERENCE FRAME

#5 | 2025-04-24
US20250129878A1
Mechanical engineering

AUTONOMOUSLY DRIVING ROBOT HAVING A SENSOR PACKAGE

#6 | 2025-04-24
US20250129875A1
Mechanical engineering

CONTROL OF ROBOT TOOL IN A SPACE-CONSTRAINED ENVIRONMENT

#7 | 2025-04-24
US20250129873A1
Mechanical engineering

CONTROL OF CUTTING IN A LINED PIPE

InventorID:

6995115 ⎘

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