Title
Safe, Multi-Agent, Reinforcement Learning for Autonomous Driving.
Abstract
Autonomous driving is a multi-agent setting where the host vehicle must apply sophisticated negotiation skills with other road users when overtaking, giving way, merging, taking left and right turns and while pushing ahead in unstructured urban roadways. Since there are many possible scenarios, manually tackling all possible cases will likely yield a too simplistic policy. Moreover, one must balance between unexpected behavior of other drivers/pedestrians and at the same time not to be too defensive so that normal traffic flow is maintained. In this paper we apply deep reinforcement learning to the problem of forming long term driving strategies. We note that there are two major challenges that make autonomous driving different from other robotic tasks. First, is the necessity for ensuring functional safety - something that machine learning has difficulty with given that performance is optimized at the level of an expectation over many instances. Second, the Markov Decision Process model often used in robotics is problematic in our case because of unpredictable behavior of other agents in this multi-agent scenario. We make three contributions in our work. First, we show how policy gradient iterations can be used without Markovian assumptions. Second, we decompose the problem into a composition of a Policy for Desires (which is to be learned) and trajectory planning with hard constraints (which is not learned). The goal of Desires is to enable comfort of driving, while hard constraints guarantees the safety of driving. Third, we introduce a hierarchical temporal abstraction we call an Option Graph with a gating mechanism that significantly reduces the effective horizon and thereby reducing the variance of the gradient estimation even further.
Year
Venue
Field
2016
arXiv: Artificial Intelligence
Markov process,Traffic flow,Computer science,Functional safety,Markov decision process,Overtaking,Artificial intelligence,Machine learning,Robotics,Negotiation,Reinforcement learning
DocType
Volume
Citations 
Journal
abs/1610.03295
36
PageRank 
References 
Authors
1.67
14
3
Name
Order
Citations
PageRank
Shai Shalev-Shwartz13681276.32
Shaked Shammah2604.15
Amnon Shashua33396384.93