Course

Autonomous Navigation for Flying Robots


Save for laterSavedDeleted 0

👤 Join WhatsApp Learners
Deal Score0

Autonomous Navigation for Flying Robots: You will learn how to infer the position of the quadrotor from its sensor readings and how to navigate it along a trajectory.

Join Email Learners

Follow the guide on landing page

In recent years, flying robots such as miniature helicopters or quadrotors have received a large gain in popularity. Potential applications range from aerial filming over remote visual inspection of industrial sites to the automatic 3D reconstruction of buildings. Navigating a quadrotor manually requires a skilled pilot and constant concentration. Therefore, there is a strong scientific interest to develop solutions that enable quadrotors to fly autonomously and without constant human supervision. This is a challenging research problem because the payload of a quadrotor is uttermost constrained and so both the quality of the onboard sensors and the available computing power is strongly limited.

In this course, we will introduce the basic concepts for autonomous navigation for quadrotors. The following topics will be covered:

  • 3D geometry,
  • probabilistic state estimation,
  • visual odometry, SLAM, 3D mapping,
  • linear control.

In particular, you will learn how to infer the position of the quadrotor from its sensor readings and how to navigate it along a trajectory.

The course consists of a series of weekly lecture videos that we be interleaved by interactive quizzes and hands-on programming tasks. For the flight experiments, we provide a browser-based quadrotor simulator that requires the students to write small code snippets in Python.

This course is intended for undergraduate and graduate students in computer science, electrical engineering, or mechanical engineering. This course has been offered by TUM for the first time in the summer term of 2014 on EdX with more than 20.000 registered students of which 1400 passed the examination. The MOOC is based on the previous TUM lecture “Visual Navigation for Flying Robots” which received the TUM TeachInf best lecture award in 2012 and 2013.

After successful participation in this module, students will be able to

  • Understand the flight principles of quadrotors and their application potential
  • Specify the pose of objects in 3D space and perform calculations between them (e.g., compute the relative motion)
  • Explain the principles of Bayesian state estimation
  • Implement and apply an extended Kalman filter (EKF), and select appropriate parameters for it
  • Implement and apply a PID controller for state control, and fine-tune its parameters
  • Understand and explain the principles of visual motion estimation and 3D mapping
Autonomous Navigation for Flying Robots
0


PREMIUM COURSE: Learn The Ultimate WhatsApp Lead Generation Blueprint: How to get customers with Facebook Ads (CLICK HERE TO LEARN MORE!)



DISCLAIMER: Courses on Future Syllabus are free but subject to return to their original prices on host platforms upon coupon expiration. Enrol while they are free.




Silas Bamigbola

Certified Computer Engineer & Author, 'Lost Boys'. I believe in the influence of right information. Join me on Twitter.

Stay active

Leave a Reply

error: Content is protected !!
Future Syllabus
Logo
Register New Account
Login/Register via your social accounts (fully secured)

or proceed manually
Reset Password