3D Occupancy Network Modelling for Multi-view Image Fusion Techniques in Autonomous Driving
Published Online: Feb 05, 2025
Received: Aug 27, 2024
Accepted: Dec 17, 2024
DOI: https://doi.org/10.2478/amns-2025-0060
Keywords
© 2025 Xingyu Hu et al., published by Sciendo
This work is licensed under the Creative Commons Attribution 4.0 International License.
The article outlines the principle and mathematical model of multi-view image fusion technology and acquires research data based on multi-view image fusion technology. Combining research data, vehicle structural parameters, and Ackermann’s steering principle, the vehicle kinematics model is constructed to complete the task of 3D occupancy network modeling. The loss function of the selected network is discussed and its training is optimized. The simulation analysis shows that along with the increase in vehicle distance, the vehicle distance detection error increases by 6.59, and the average detection error is 3.72%, which is within the error allowance. In addition, in the path planning simulation analysis, the path planning time of this paper’s method is, which indicates that the 3D occupancy network can quickly and efficiently plan an effective and feasible path according to the change of obstacle position, and it practices the principle of safe and automatic driving well.