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Main Authors: Testouri, Mehdi, Elghazaly, Gamal, Frank, Raphael
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2308.01654
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author Testouri, Mehdi
Elghazaly, Gamal
Frank, Raphael
author_facet Testouri, Mehdi
Elghazaly, Gamal
Frank, Raphael
contents Planning safe trajectories in Autonomous Driving Systems (ADS) is a complex problem to solve in real-time. The main challenge to solve this problem arises from the various conditions and constraints imposed by road geometry, semantics and traffic rules, as well as the presence of dynamic agents. Recently, Model Predictive Path Integral (MPPI) has shown to be an effective framework for optimal motion planning and control in robot navigation in unstructured and highly uncertain environments. In this paper, we formulate the motion planning problem in ADS as a nonlinear stochastic dynamic optimization problem that can be solved using an MPPI strategy. The main technical contribution of this work is a method to handle obstacles within the MPPI formulation safely. In this method, obstacles are approximated by circles that can be easily integrated into the MPPI cost formulation while considering safety margins. The proposed MPPI framework has been efficiently implemented in our autonomous vehicle and experimentally validated using three different primitive scenarios. Experimental results show that generated trajectories are safe, feasible and perfectly achieve the planning objective. The video results as well as the open-source implementation are available at: https://gitlab.uni.lu/360lab-public/mppi
format Preprint
id arxiv_https___arxiv_org_abs_2308_01654
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Towards a Safe Real-Time Motion Planning Framework for Autonomous Driving Systems: An MPPI Approach
Testouri, Mehdi
Elghazaly, Gamal
Frank, Raphael
Robotics
Planning safe trajectories in Autonomous Driving Systems (ADS) is a complex problem to solve in real-time. The main challenge to solve this problem arises from the various conditions and constraints imposed by road geometry, semantics and traffic rules, as well as the presence of dynamic agents. Recently, Model Predictive Path Integral (MPPI) has shown to be an effective framework for optimal motion planning and control in robot navigation in unstructured and highly uncertain environments. In this paper, we formulate the motion planning problem in ADS as a nonlinear stochastic dynamic optimization problem that can be solved using an MPPI strategy. The main technical contribution of this work is a method to handle obstacles within the MPPI formulation safely. In this method, obstacles are approximated by circles that can be easily integrated into the MPPI cost formulation while considering safety margins. The proposed MPPI framework has been efficiently implemented in our autonomous vehicle and experimentally validated using three different primitive scenarios. Experimental results show that generated trajectories are safe, feasible and perfectly achieve the planning objective. The video results as well as the open-source implementation are available at: https://gitlab.uni.lu/360lab-public/mppi
title Towards a Safe Real-Time Motion Planning Framework for Autonomous Driving Systems: An MPPI Approach
topic Robotics
url https://arxiv.org/abs/2308.01654