학술논문

Learning to Predict Navigational Patterns From Partial Observations
Document Type
Periodical
Source
IEEE Robotics and Automation Letters IEEE Robot. Autom. Lett. Robotics and Automation Letters, IEEE. 8(9):5592-5599 Sep, 2023
Subject
Robotics and Control Systems
Computing and Processing
Components, Circuits, Devices and Systems
Navigation
Predictive models
Trajectory
Semantics
Visualization
Roads
Vehicle dynamics
Vision-based navigation
semantic scene understanding
continual learning
learning from experience
motion and path planning
Language
ISSN
2377-3766
2377-3774
Abstract
Human beings cooperatively navigate rule-constrained environments by adhering to mutually known navigational patterns, which may be represented as directional pathways or road lanes. Inferring these navigational patterns from incompletely observed environments is required for intelligent mobile robots operating in unmapped locations. However, algorithmically defining these navigational patterns is nontrivial. This letter presents the first self-supervised learning (SSL) method for learning to infer navigational patterns in real-world environments from partial observations only. We explain how geometric data augmentation, predictive world modeling, and an information-theoretic regularizer enable our model to predict an unbiased local directional soft lane probability (DSLP) field in the limit of infinite data. We demonstrate how to infer global navigational patterns by fitting a maximum likelihood graph to the DSLP field. Experiments show that our SSL model outperforms two SOTA supervised lane graph prediction models on the nuScenes dataset. We propose our SSL method as a scalable and interpretable continual learning paradigm for navigation by perception.