Extended Object Estimation with Machine and Deep Learning Methods

Machine Learning and Deep Learning Methods grow more and more prevalent in today's scientific research, in almost all disciplines. Autonomous driving and advanced driver assistant systems (ADAS) are some of the newer areas, where these methods are employed. In current research, they're mostly used to recognize different objects in camera images, such as persons, other cars, signs, and so on, depending on exorbitant manual labour to categorize types of images

A new and exciting area of research is the investigation of high resolution radar data to detect the position of objects like cars, persons, bikes, or more. In this work, we want to focus on finding and verifying methods to extract information about extended objects in automotive scenarios, using methods of Machine or Deep Learning. These are properties like position, length, width, orientation or motion, but also the possibility to use machine/deep learning for clustering target points for later evaluation. For this, high resolution 3D radar data (range, angle and velocity) will be used.
Type of Work
  • Literature research and introduction into topic
  • Identification of machine learning and deep learning methods to be used for this purpose
  • Realization of one or more approaches
  • Verification of realized methods


Recommended Knowledge
  • Basic Lectures at MWT
  • Intermediate Lectures at MWT covering Radar principles
  • Proficient in MATLAB
  • Proficient in Python
  • Basic Knowledge in Tensor Flow Framework
Misc

Starting date: immediately
The range of this work is very broad and will be narrowed down together by the student and both supervisors.