University of Twente Student Theses

Login

Bike Ego-Trajectory Mapping Using a CNN-LSTM With IMU and Monocular Camera

Redeker, S. (2024) Bike Ego-Trajectory Mapping Using a CNN-LSTM With IMU and Monocular Camera.

[img] PDF
5MB
Abstract:This paper presents a CNN-LSTM-based approach for mapping bicycle ego-trajectories based on inertial-camera data, capable of accurately capturing non-straight-line movements such as turns and curves. I introduce a novel bicycle trajectory dataset that integrates recordings from a 6 DOF IMU and two cameras, supplemented by GNSS ground truth data. The study systematically evaluates 25 different CNN-LSTM configurations, varying architectures and input parameters, with the top-performing model achieving a RMSE of 4.4 m on a 134 m trajectory. The best-generalised model achieved a RMSE of 33 m on a 598 m trajectory. Although the models are not directly usable for urban trajectories, they lay the foundation for the development and subsequent adoption of bike mapping algorithms. The code and dataset are open source to facilitate further research in this area.
Item Type:Essay (Bachelor)
Faculty:EEMCS: Electrical Engineering, Mathematics and Computer Science
Subject:30 exact sciences in general, 50 technical science in general, 53 electrotechnology, 54 computer science, 55 traffic technology, transport technology
Programme:Electrical Engineering BSc (56953)
Link to this item:https://purl.utwente.nl/essays/100953
Export this item as:BibTeX
EndNote
HTML Citation
Reference Manager

 

Repository Staff Only: item control page