Paper
28 February 2024 Multi-objective optimal decision making for autonomous driving based on multi-modal predicted trajectories
Yanzhi Lv, Chao Wei
Author Affiliations +
Proceedings Volume 13071, International Conference on Mechatronic Engineering and Artificial Intelligence (MEAI 2023); 130713Y (2024) https://doi.org/10.1117/12.3025497
Event: International Conference on Mechatronic Engineering and Artificial Intelligence (MEAI 2023), 2023, Shenyang, China
Abstract
With the advancement of science and technology, the rapid development of the autonomous driving industry has put forward higher requirements for related algorithms. To improve the reliability and intelligence of autonomous vehicles, it is necessary to have robust and reliable decision-making module, which depends on accurate trajectory prediction. In this paper, research on multi-modal trajectory prediction and decision-making for autonomous driving based on deep learning is carried out. Firstly, a multi-modal trajectory prediction model is constructed based on graph neural network to obtain the predicted trajectories of vehicles around the autonomous vehicle. Based on the prediction results, a decision-making network model of the autonomous vehicle is constructed, and the optimal decision-making results satisfying the multi-objective requirements are obtained by combining the multi-objective optimization method. The experimental results verified the feasibility of the method and its good performance.
(2024) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Yanzhi Lv and Chao Wei "Multi-objective optimal decision making for autonomous driving based on multi-modal predicted trajectories", Proc. SPIE 13071, International Conference on Mechatronic Engineering and Artificial Intelligence (MEAI 2023), 130713Y (28 February 2024); https://doi.org/10.1117/12.3025497
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KEYWORDS
Decision making

Autonomous driving

Autonomous vehicles

Unmanned vehicles

Neural networks

Deep learning

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