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GRF · 9043338ActiveAutonomous Driving / Safety

Modelling and Handling Uncertainties in Autonomous Driving Systems

WANG, JianpingJan 2023 – presentResearch Reference

Overview

The cornerstone of an autonomous vehicle is driving safety, which is jointly determined by perception, prediction, motion planning, and control in an autonomous driving system. The performance of the above modules is highly subject to various uncertainties caused by adverse weather or imperfect deep machine learning algorithms. Moreover, the impact of uncertainties may propagate from an upstream task to its downstream tasks. In the literature, uncertainties are modelled separately in different tasks, which cannot capture uncertainties coherently, leading to either over-optimistic or over-conservative driving decisions.

This project tackles the above critical problem by developing a unified framework to handle uncertainties in an end-to-end manner. In particular, uncertainties from perception and prediction will be quantified and represented in a unified format as a probabilistic occupancy map. To smoothly integrate existing motion planning algorithms into our framework, we will extend existing motion planning algorithms into their robust versions. In particular, for mathematical-based motion planning, we will derive probabilistic constraints from the probabilistic occupancy map so that traditional optimization approaches can handle uncertainties by planning the optimal trajectory satisfying the probabilistic constraints. For learning-based motion planning, we will derive potential collision probability from the probabilistic occupancy map and add it into the loss function of learning-based motion planning.

In addition, to achieve a good balance between robustness and other performance metrics, we enable the motion planning task to output a safe driving corridor so that the control task can find the optimal commands to constitute the running trajectory bounded by the given safe driving corridor. To evaluate the robustness of an autonomous driving system as a whole as well as the robustness of individual tasks, we plan to develop a benchmark suite consisting of typical traffic scenarios in different weather conditions, feasible alternative trajectories, and safety metrics.

In summary, the project will provide (1) a unified representation for different types of uncertainties which can be used across the pipeline of an autonomous driving system, (2) a new interface between upstream tasks and downstream tasks to inherit uncertainty consideration, (3) a generic approach to incorporate uncertainty awareness into existing motion planning and control algorithms, and (4) a benchmark suite tailored for robustness evaluation. This project will improve the robustness of autonomous driving systems and relieve the safety concern of the public towards autonomous vehicles.

Reference Details

Reference Number
9043338
Program
GRF
Status
Active
Timeline
Jan 2023 – present
Lead
WANG, Jianping
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Technical Focus

Key topics and areas associated with this entry.

Autonomous Driving100%Motion Planning56%Handling Uncertainty37%Autonomous Vehicles28%Prediction Model25%Probabilistic Framework22%Robustness Evaluation18%Sensor Fusion15%

Related Outputs

3 related outputs.

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2025 IEEE International Conference on Robotics and Automation (ICRA), p. 336–342

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Dynamic Defense for Car-Borne LiDAR Vehicle Detection

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2025

VI-Planning: Infrastructure-Assisted Real-Time Planning Optimization for Autonomous Driving

Lu, Y., Wang, J., Dong, X., Huang, Z., Liu, B., Wu, J.-M. & Wang, J.

ACM MobiCom '25 – Proceedings of the 31st Annual International Conference on Mobile Computing and Networking, p. 923–937

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