ResearchTrend.AI
  • Papers
  • Communities
  • Events
  • Blog
  • Pricing
Papers
Communities
Social Events
Terms and Conditions
Pricing
Parameter LabParameter LabTwitterGitHubLinkedInBlueskyYoutube

© 2025 ResearchTrend.AI, All rights reserved.

  1. Home
  2. Papers
  3. 2408.15425
17
3

Fast and Modular Autonomy Software for Autonomous Racing Vehicles

27 August 2024
Andrew Saba
Aderotimi Adetunji
Adam Johnson
Aadi Kothari
Matthew Sivaprakasam
Joshua Spisak
Prem Bharatia
Arjun Chauhan
Brendan Duff Jr.
Noah Gasparro
Charles King
Ryan Larkin
Brian Mao
Micah Nye
Anjali Parashar
Joseph Attias
Aurimas Balciunas
Austin Brown
Chris Chang
Ming Gao
Cindy Heredia
Andrew Keats
Jose Lavariega
William Muckelroy III
Andre Slavescu
Nickolas Stathas
Nayana Suvarna
Chuan Tian Zhang
Sebastian Scherer
Deva Ramanan
ArXivPDFHTML
Abstract

Autonomous motorsports aim to replicate the human racecar driver with software and sensors. As in traditional motorsports, Autonomous Racing Vehicles (ARVs) are pushed to their handling limits in multi-agent scenarios at extremely high (≥150mph\geq 150mph≥150mph) speeds. This Operational Design Domain (ODD) presents unique challenges across the autonomy stack. The Indy Autonomous Challenge (IAC) is an international competition aiming to advance autonomous vehicle development through ARV competitions. While far from challenging what a human racecar driver can do, the IAC is pushing the state of the art by facilitating full-sized ARV competitions. This paper details the MIT-Pitt-RW Team's approach to autonomous racing in the IAC. In this work, we present our modular and fast approach to agent detection, motion planning and controls to create an autonomy stack. We also provide analysis of the performance of the software stack in single and multi-agent scenarios for rapid deployment in a fast-paced competition environment. We also cover what did and did not work when deployed on a physical system the Dallara AV-21 platform and potential improvements to address these shortcomings. Finally, we convey lessons learned and discuss limitations and future directions for improvement.

View on arXiv
Comments on this paper