Autonomous Driving Small-Scale Cars: A Survey of Recent Development
- URL: http://arxiv.org/abs/2404.06229v2
- Date: Fri, 20 Dec 2024 16:10:32 GMT
- Title: Autonomous Driving Small-Scale Cars: A Survey of Recent Development
- Authors: Dianzhao Li, Paul Auerbach, Ostap Okhrin,
- Abstract summary: The emergence of small-scale car platforms offers a compelling alternative to full-scale autonomous driving vehicles.
This survey outlines various small-scale car platforms, categorizing them and detailing the research advancements accomplished through their usage.
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- Abstract: While engaging with the unfolding revolution in autonomous driving, a challenge presents itself, how can we effectively raise awareness within society about this transformative trend? While full-scale autonomous driving vehicles often come with a hefty price tag, the emergence of small-scale car platforms offers a compelling alternative. These platforms not only serve as valuable educational tools for the broader public and young generations but also function as robust research platforms, contributing significantly to the ongoing advancements in autonomous driving technology. This survey outlines various small-scale car platforms, categorizing them and detailing the research advancements accomplished through their usage. The conclusion provides proposals for promising future directions in the field.
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