MAE 4810

MAE 4810

Course information provided by the Courses of Study 2021-2022.

An introductory course to robot perception techniques for modeling and planning heterogeneous and dynamic sensor measurements, and for processing the sensor feedback in the context of robot motions and environments. Methods for intelligent sensor fusion and robot perception in motion will be covered in detail in this course. Topics in artificial vision, acoustic propagation, and filtering will be discussed along with related algorithms inspired by neural networks, Bayesian networks, and information theory. Sensing problems and performance will be investigated in regard to benchmark problems, such as coverage, target search, target tracking, and treasure hunting, will be covered in-depth and demonstrated through applications drawn from environmental monitoring, sensing-and-pursuit games, surveillance, and human-robot interactions.

When Offered Fall.

Prerequisites/Corequisites Prerequisite: ENGRD 2112, MATH 2940, and MATH 4710 (or ENGRD 2700 or ENGRD 2720); or graduate standing in a technical field.

Outcomes
  • Students will use methods for sensor fusion to inform robot perception.
  • Students will implement artificial vision, acoustic propagation, and filtering along with neural networks, Bayesian algorithms, and information theory to identify robot states.
  • Students will analyze benchmark problems such as coverage, target search, target tracking, and treasure hunting.

View Enrollment Information

Syllabi: none
  •   Regular Academic Session.  Combined with: MAE 5810

  • 3 Credits Graded

  • 19379 MAE 4810   LEC 001

    • MW Upson Hall 206
    • Aug 26 - Dec 7, 2021
    • Ferrari, S

  • Instruction Mode: In Person