Decentralized cooperative perception for autonomous vehicles: Learning to value the unknown

12/12/2022
by   Maxime Chaveroche, et al.
0

Recently, we have been witnesses of accidents involving autonomous vehicles and their lack of sufficient information. One way to tackle this issue is to benefit from the perception of different view points, namely cooperative perception. We propose here a decentralized collaboration, i.e. peer-to-peer, in which the agents are active in their quest for full perception by asking for specific areas in their surroundings on which they would like to know more. Ultimately, we want to optimize a trade-off between the maximization of knowledge about moving objects and the minimization of the total volume of information received from others, to limit communication costs and message processing time. For this, we propose a way to learn a communication policy that reverses the usual communication paradigm by only requesting from other vehicles what is unknown to the ego-vehicle, instead of filtering on the sender side. We tested three different generative models to be taken as base for a Deep Reinforcement Learning (DRL) algorithm, and compared them to a broadcasting policy and a policy randomly selecting areas. In particular, we propose Locally Predictable VAE (LP-VAE), which appears to be producing better belief states for predictions than state-of-the-art models, both as a standalone model and in the context of DRL. Experiments were conducted in the driving simulator CARLA. Our best models reached on average a gain of 25 the total complementary information, while only requesting about 5 ego-vehicle's perceptual field. This trade-off is adjustable through the interpretable hyperparameters of our reward function.

READ FULL TEXT
research
04/23/2020

Cooperative Perception with Deep Reinforcement Learning for Connected Vehicles

Sensor-based perception on vehicles are becoming prevalent and important...
research
08/26/2020

Decision-making for Autonomous Vehicles on Highway: Deep Reinforcement Learning with Continuous Action Horizon

Decision-making strategy for autonomous vehicles de-scribes a sequence o...
research
05/04/2022

COOPERNAUT: End-to-End Driving with Cooperative Perception for Networked Vehicles

Optical sensors and learning algorithms for autonomous vehicles have dra...
research
03/09/2020

Behavior Planning For Connected Autonomous Vehicles Using Feedback Deep Reinforcement Learning

With the development of communication technologies, connected autonomous...
research
09/17/2019

TruPercept: Trust Modelling for Autonomous Vehicle Cooperative Perception from Synthetic Data

Inter-vehicle communication for autonomous vehicles (AVs) stands to prov...
research
02/12/2022

Online V2X Scheduling for Raw-Level Cooperative Perception

Cooperative perception of connected vehicles comes to the rescue when th...
research
09/09/2021

DROP: Deep relocating option policy for optimal ride-hailing vehicle repositioning

In a ride-hailing system, an optimal relocation of vacant vehicles can s...

Please sign up or login with your details

Forgot password? Click here to reset