Master's Thesis: Object List Generation and Extraction for V2X Communication
25.06.2025, Diplomarbeiten, Bachelor- und Masterarbeiten
Development of an advanced real-time object detection system for V2X communication by fusing camera, LiDAR, and radar data. The system detects, tracks, and predicts object movements using probabilistic models to enhance situational awareness, reduce collision risk, and optimize data transmission in connected and autonomous vehicles.
Call for Master’s Thesis Candidates
Object List Generation and Extraction for V2X Communication
Chair of Robotics, Artificial Intelligence and Real-time Systems
TUM School of Computation, Information and Technology
Project Description
You will design and implement a modular, real-time processing chain that fuses camera, LiDAR and radar data to:
- Detect and classify objects using state-of-the-art algorithms (e.g. YOLO, PointNet)
- Track object positions and estimate their speeds (Kalman/particle filters)
- Predict future trajectories with probabilistic modeling
- Optimize data compression and error-correction strategies for efficient V2X transmission
- Validate the overall system in both simulation and real-world experiments
Your Tasks
- Develop the multi-sensor fusion pipeline in Python and C++
- Integrate and fine-tune deep learning detection models
- Implement tracking and trajectory-prediction modules
- Design data-compression schemes and assess communication reliability
- Run benchmarks, analyze performance, and document your findings
Your Profile
- Enrolled in a Master’s program (Computer Science, Electrical Engineering, Robotics or related)
- Strong programming skills in Python and C++
- Experience with machine learning frameworks (TensorFlow, PyTorch)
- Familiarity with object detection (CNNs, Transformers), tracking algorithms and probabilistic methods
- Basic understanding of V2X protocols (DSRC, C-V2X) and real-time system constraints
- Good communication skills and ability to work both independently and in a team
We Offer
- Hands-on research experience with industry-relevant use cases
- Access to state-of-the-art sensor hardware and simulation platforms
- Close mentorship from leading AI and robotics experts
- Opportunity to co-author publications and present at conferences
- Flexible working hours and a collaborative lab environment
How to Apply
Please send the following documents as a single PDF to
kuoyi.chao@tum.de
with the subject line “Master’s Thesis Application – Object List Generation for V2X”:
- Curriculum vitae
- Transcript of records
- A brief motivation letter (max. 1 page)
Review of applications begins immediately and continues until the position is filled. We look forward to your application!
Kontakt: kuoyi.chao@tum.de
More Information
https://www.ce.cit.tum.de/fileadmin/w00cgn/air/_my_direct_uploads/MA___Object_List_Generation_and_Extraction_for_V2X_Communication.pdf