Safe and Scalable Planning Under Uncertainty for Autonomous Driving

Safe and Scalable Planning Under Uncertainty for Autonomous Driving
Author :
Publisher :
Total Pages :
Release :
ISBN-10 : OCLC:1144818060
ISBN-13 :
Rating : 4/5 ( Downloads)

Book Synopsis Safe and Scalable Planning Under Uncertainty for Autonomous Driving by : Maxime Thomas Marcel Bouton

Download or read book Safe and Scalable Planning Under Uncertainty for Autonomous Driving written by Maxime Thomas Marcel Bouton and published by . This book was released on 2020 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt: Autonomous driving has the potential to significantly improve safety. Although progress has been made in recent years to deploy automated driving technologies, many situations handled on a daily basis by human drivers remain challenging for autonomous vehicles, such as navigating urban environments. They must reach their goal safely and efficiently while considering a multitude of traffic participants with rapidly changing behavior. Hand-engineering strategies to navigate such environments requires anticipating many possible situations and finding a suitable behavior for each, which places a large burden on the designer and is unlikely to scale to complicated situations. In addition, autonomous vehicles rely on on-board perception systems that give noisy estimates of the location and velocity of others on the road and are sensitive to occlusions. Autonomously navigating urban environments requires algorithms that reason about interactions with and between traffic participants with limited information. This thesis addresses the problem of automatically generating decision making strategies for autonomous vehicles in urban environments. Previous approaches relied on planning with respect to a mathematical model of the environment but have many limitations. A partially observable Markov decision process (POMDP) is a standard model for sequential decision making problems in dynamic, uncertain environments with imperfect sensor measurements. This thesis demonstrates a generic representation of driving scenarios as POMDPs, considering sensor occlusions and interactions between road users. A key contribution of this thesis is a methodology to scale POMDP approaches to complex environments involving a large number of traffic participants. To reduce the computational cost of considering multiple traffic participants, a decomposition method leveraging the strategies of interacting with a subset of road users is introduced. Decomposition methods can approximate the solutions to large sequential decision making problems at the expense of sacrificing optimality. This thesis introduces a new algorithm that uses deep reinforcement learning to bridge the gap with the optimal solution. Establishing trust in the generated decision strategies is also necessary for the deployment of autonomous vehicles. Methods to constrain a policy trained using reinforcement learning are introduced and combined with the proposed decomposition techniques. This method allows to learn policies with safety constraints. To address state uncertainty, a new methodology for computing probabilistic safety guarantees in partially observable domains is introduced. It is shown that the new method is more flexible and more scalable than previous work. The algorithmic contributions present in this thesis are applied to a variety of driving scenarios. Each algorithm is evaluated in simulation and compared to previous work. It is shown that the POMDP formulation in combination with scalable solving methods provide a flexible framework for planning under uncertainty for autonomous driving.


Safe and Scalable Planning Under Uncertainty for Autonomous Driving Related Books

Safe and Scalable Planning Under Uncertainty for Autonomous Driving
Language: en
Pages:
Authors: Maxime Thomas Marcel Bouton
Categories:
Type: BOOK - Published: 2020 - Publisher:

DOWNLOAD EBOOK

Autonomous driving has the potential to significantly improve safety. Although progress has been made in recent years to deploy automated driving technologies,
Belief State Planning for Autonomous Driving: Planning with Interaction, Uncertain Prediction and Uncertain Perception
Language: en
Pages: 178
Authors: Hubmann, Constantin
Categories: Technology & Engineering
Type: BOOK - Published: 2021-09-13 - Publisher: KIT Scientific Publishing

DOWNLOAD EBOOK

This work presents a behavior planning algorithm for automated driving in urban environments with an uncertain and dynamic nature. The algorithm allows to consi
Safety and Efficiency in Autonomous Vehicles Through Planning with Uncertainty
Language: en
Pages:
Authors: Zachary Nolan Sunberg
Categories:
Type: BOOK - Published: 2018 - Publisher:

DOWNLOAD EBOOK

Safety is the highest priority for autonomous vehicles, but if they are not also efficient in terms of time and other resources, they will have a significant co
Interaction-aware Planning Under Uncertainty for Autonomous Driving
Language: en
Pages: 0
Authors: Salar Arbabi
Categories:
Type: BOOK - Published: 2023 - Publisher:

DOWNLOAD EBOOK

This note is part of Quality testing.
Motion Planning for Autonomous Vehicles in Partially Observable Environments
Language: en
Pages: 222
Authors: Taş, Ömer Şahin
Categories:
Type: BOOK - Published: 2023-10-23 - Publisher: KIT Scientific Publishing

DOWNLOAD EBOOK

This work develops a motion planner that compensates the deficiencies from perception modules by exploiting the reaction capabilities of a vehicle. The work ana