A Hierarchical Architecture for Sequential Decision-Making in Autonomous Driving using Deep Reinforcement Learning

06/20/2019
by   Majid Moghadam, et al.
6

Tactical decision making is a critical feature for advanced driving systems, that incorporates several challenges such as complexity of the uncertain environment and reliability of the autonomous system. In this work, we develop a multi-modal architecture that includes the environmental modeling of ego surrounding and train a deep reinforcement learning (DRL) agent that yields consistent performance in stochastic highway driving scenarios. To this end, we feed the occupancy grid of the ego surrounding into the DRL agent and obtain the high-level sequential commands (i.e. lane change) to send them to lower-level controllers. We will show that dividing the autonomous driving problem into a multi-layer control architecture enables us to leverage the AI power to solve each layer separately and achieve an admissible reliability score. Comparing with end-to-end approaches, this architecture enables us to end up with a more reliable system which can be implemented in actual self-driving cars.

READ FULL TEXT

page 2

page 4

research
09/18/2019

Automated Lane Change Decision Making using Deep Reinforcement Learning in Dynamic and Uncertain Highway Environment

Autonomous lane changing is a critical feature for advanced autonomous d...
research
08/27/2021

WAD: A Deep Reinforcement Learning Agent for Urban Autonomous Driving

Urban autonomous driving is an open and challenging problem to solve as ...
research
07/25/2019

Dynamic Input for Deep Reinforcement Learning in Autonomous Driving

In many real-world decision making problems, reaching an optimal decisio...
research
03/29/2019

Towards Brain-inspired System: Deep Recurrent Reinforcement Learning for Simulated Self-driving Agent

An effective way to achieve intelligence is to simulate various intellig...
research
09/30/2019

Dynamic Interaction-Aware Scene Understanding for Reinforcement Learning in Autonomous Driving

The common pipeline in autonomous driving systems is highly modular and ...
research
01/30/2022

Graph Convolution-Based Deep Reinforcement Learning for Multi-Agent Decision-Making in Mixed Traffic Environments

An efficient and reliable multi-agent decision-making system is highly d...
research
11/28/2017

Deep Predictive Models for Collision Risk Assessment in Autonomous Driving

In this paper, we investigate a predictive approach for collision risk a...

Please sign up or login with your details

Forgot password? Click here to reset