Interaction-aware Decision Making with Adaptive Strategies under Merging Scenarios

04/12/2019
by   Yeping Hu, et al.
0

In order to drive safely and efficiently under merging scenarios, autonomous vehicles should be aware of their surroundings and make decisions by interacting with other road participants. Moreover, different strategies should be made when the autonomous vehicle is interacting with drivers having different level of cooperativeness. Whether the vehicle is on the merge-lane or main-lane will also influence the driving maneuvers since drivers will behave differently when they have the right-of-way than otherwise. Many traditional methods have been proposed to solve decision making problems under merging scenarios. However, these works either are incapable of modeling complicated interactions or require implementing hand-designed rules which cannot properly handle the uncertainties in real-world scenarios. In this paper, we proposed an interaction-aware decision making with adaptive strategies (IDAS) approach that can let the autonomous vehicle negotiate the road with other drivers by leveraging their cooperativeness under merging scenarios. A single policy is learned under the multi-agent reinforcement learning (MARL) setting via the curriculum learning strategy, which enables the agent to automatically infer other drivers' various behaviors and make decisions strategically. A masking mechanism is also proposed to prevent the agent from exploring states that violate common sense of human judgment and increase the learning efficiency. An exemplar merging scenario was used to implement and examine the proposed method.

READ FULL TEXT
research
06/26/2019

Cooperation-Aware Reinforcement Learning for Merging in Dense Traffic

Decision making in dense traffic can be challenging for autonomous vehic...
research
08/17/2020

MIDAS: Multi-agent Interaction-aware Decision-making with Adaptive Strategies for Urban Autonomous Navigation

Autonomous navigation in crowded, complex urban environments requires in...
research
10/15/2022

On Trustworthy Decision-Making Process of Human Drivers from the View of Perceptual Uncertainty Reduction

Humans are experts in making decisions for challenging driving tasks wit...
research
09/15/2019

Driving in Dense Traffic with Model-Free Reinforcement Learning

Traditional planning and control methods could fail to find a feasible t...
research
02/15/2021

Uncovering Interpretable Internal States of Merging Tasks at Highway On-Ramps for Autonomous Driving Decision-Making

Humans make daily-routine decisions based on their internal states in in...
research
08/07/2018

Collaborative Planning for Mixed-Autonomy Lane Merging

Driving is a social activity: drivers often indicate their intent to cha...
research
04/13/2023

A model of communication-enabled traffic interactions

A major challenge for autonomous vehicles is handling interactive scenar...

Please sign up or login with your details

Forgot password? Click here to reset