CVApr 17, 2025

Collaborative Perception Datasets for Autonomous Driving: A Review

arXiv:2504.12696v215 citationsh-index: 12Has CodeIEEE Sens J
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It provides a foundational resource for researchers and practitioners in autonomous driving by standardizing dataset evaluation and identifying future challenges.

This paper reviews and compares existing collaborative perception datasets for autonomous driving, categorizing them by cooperation paradigms and analyzing their data sources, scenarios, and sensor modalities to address the lack of systematic summarization in the field.

Collaborative perception has attracted growing interest from academia and industry due to its potential to enhance perception accuracy, safety, and robustness in autonomous driving through multi-agent information fusion. With the advancement of Vehicle-to-Everything (V2X) communication, numerous collaborative perception datasets have emerged, varying in cooperation paradigms, sensor configurations, data sources, and application scenarios. However, the absence of systematic summarization and comparative analysis hinders effective resource utilization and standardization of model evaluation. As the first comprehensive review focused on collaborative perception datasets, this work reviews and compares existing resources from a multi-dimensional perspective. We categorize datasets based on cooperation paradigms, examine their data sources and scenarios, and analyze sensor modalities and supported tasks. A detailed comparative analysis is conducted across multiple dimensions. We also outline key challenges and future directions, including dataset scalability, diversity, domain adaptation, standardization, privacy, and the integration of large language models. To support ongoing research, we provide a continuously updated online repository of collaborative perception datasets and related literature: https://github.com/frankwnb/Collaborative-Perception-Datasets-for-Autonomous-Driving.

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