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Main Authors: Sarker, Supriya, Maples, Brent, Islam, Iftekharul, Fan, Muyang, Papadopoulos, Christos, Li, Weizi
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2412.14207
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author Sarker, Supriya
Maples, Brent
Islam, Iftekharul
Fan, Muyang
Papadopoulos, Christos
Li, Weizi
author_facet Sarker, Supriya
Maples, Brent
Islam, Iftekharul
Fan, Muyang
Papadopoulos, Christos
Li, Weizi
contents Autonomous driving has rapidly evolved through synergistic developments in hardware and artificial intelligence. This comprehensive review investigates traffic datasets and simulators as dual pillars supporting autonomous vehicle (AV) development. Unlike prior surveys that examine these resources independently, we present an integrated analysis spanning the entire AV pipeline-perception, localization, prediction, planning, and control. We evaluate annotation practices and quality metrics while examining how geographic diversity and environmental conditions affect system reliability. Our analysis includes detailed characterizations of datasets organized by functional domains and an in-depth examination of traffic simulators categorized by their specialized contributions to research and development. The paper explores emerging trends, including novel architecture frameworks, multimodal AI integration, and advanced data generation techniques that address critical edge cases. By highlighting the interconnections between real-world data collection and simulation environments, this review offers researchers a roadmap for developing more robust and resilient autonomous systems equipped to handle the diverse challenges encountered in real-world driving environments.
format Preprint
id arxiv_https___arxiv_org_abs_2412_14207
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Comprehensive Review on Traffic Datasets and Simulators for Autonomous Vehicles
Sarker, Supriya
Maples, Brent
Islam, Iftekharul
Fan, Muyang
Papadopoulos, Christos
Li, Weizi
Robotics
Autonomous driving has rapidly evolved through synergistic developments in hardware and artificial intelligence. This comprehensive review investigates traffic datasets and simulators as dual pillars supporting autonomous vehicle (AV) development. Unlike prior surveys that examine these resources independently, we present an integrated analysis spanning the entire AV pipeline-perception, localization, prediction, planning, and control. We evaluate annotation practices and quality metrics while examining how geographic diversity and environmental conditions affect system reliability. Our analysis includes detailed characterizations of datasets organized by functional domains and an in-depth examination of traffic simulators categorized by their specialized contributions to research and development. The paper explores emerging trends, including novel architecture frameworks, multimodal AI integration, and advanced data generation techniques that address critical edge cases. By highlighting the interconnections between real-world data collection and simulation environments, this review offers researchers a roadmap for developing more robust and resilient autonomous systems equipped to handle the diverse challenges encountered in real-world driving environments.
title A Comprehensive Review on Traffic Datasets and Simulators for Autonomous Vehicles
topic Robotics
url https://arxiv.org/abs/2412.14207