Advanced Estimation Methods for Autonomous Robotic Systems

The participants learn to independently explore and understand a given topic and present it to the other participants in a concise and coherent way.

Intended Participants  Master Students
Instructors Christopher Funk, Benjamin Noack
SWS 2
Credits 3
Languages English / German
Prerequisites Attendance of Lecture AMR is helpful
Kick-Off

Monday, 11.04.2022, TBA

 

Course Description

For an autonomous robotic system, being able to extract information, e.g., about its position, orientation, and its surroundings, from sensor readings, is essential for its successful and safe operation.

This seminar covers a variety of methods, such as nonlinear versions of the Kalman filter, particle filters, moving horizon estimation, as well as Bayesian estimation for discrete-valued quantities, for such robotic estimation tasks.

 

Registration

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Last Modification: 13.06.2023 - Contact Person: Webmaster