Table of Contents

Autonomous robotics – B(E)3M33ARO

Course overview

The Autonomous robotics course will explain the principles needed to develop algorithms for mobile robots. In particular, the main focus is on:

It is assumed that students of this course have a working knowledge of mathematical analysis, linear algebra, probability theory, and statistics. In addition, basic programming skills in python are expected.

Distant teaching

In order to minimize the risk of spreading the coronavirus, contact (classroom) teaching has been replaced by web-based distance learning, see regularly updated list of coronavirus news for more details. The course consists of lectures and labs, both taught online using BBB client which runs directly in the web browser. The time-slot corresponds to the officialrozvrh/timetable. All students will receive an email invitation with the link to the conference room not later than 1 hour before the their lecture/lab.

Points, credit requirements and final grade

Maximum number of points is 100. Points are structured as follows:

Minimum credit requirements:

The final grade will be determined by the total number of points according to the following table

No of points Exam assessment
0-49 F
50- 59 E
60-69 D
70-79 C
80-89 B
90-100 A
  1. [KZ] Goodfellow et al. Deep Learning, 2016 http://www.deeplearningbook.org
  2. [KZ] Hartley, Zisserman Multipleview Geometry, 2004, https://www.robots.ox.ac.uk/~vgg/hzbook
  3. [KZ] Thrun et al. Probabilistic robotics, MIT press 2017, pdf
  4. [VV] Steven M. LaValle. Planning Algorithms, Cambridge University Press, 2006. (volně na internetu, http://planning.cs.uiuc.edu/)
  5. [VH] B. Siciliano, O. Khatib (editoři). Handbook of Robotics, Springer-Verlag, Berlin 2008.

Plagiarism

We want students to work individually, therefore any plagiarism in codes, homework or reports will be mercilessly punished ;-). We strongly urge each student to read what is/isnot a plagiarism - we believe that many students will be surprised. In any case, it is not permitted to use the work of your colleagues or predecessors. Each student is responsible for ensuring that his work does not get into the hands of other colleagues. In the case of multiple submission of the same work, all involved students will be penalized, including those who gave the work available to others