PAVE: An End-to-End Dataset for Production Autonomous Vehicle Evaluation
Xiangyu Li, Chen Wang, Yumao Liu, Dengbo He, Jiahao Zhang, Ke Ma

TL;DR
PAVE is a comprehensive, real-world, end-to-end dataset for autonomous vehicle evaluation, featuring diverse scenarios, high-precision data, and trajectory annotations to advance safety assessment and behavior analysis.
Contribution
This paper introduces the first end-to-end autonomous vehicle dataset collected entirely in autonomous mode, with detailed scenario attributes and trajectory data for safety evaluation.
Findings
Achieved 1.4 m average displacement error in trajectory prediction
Collected over 100 hours of real-world autonomous driving data
Dataset covers diverse scenarios including different weather, lighting, and road types
Abstract
Most existing autonomous-driving datasets (e.g., KITTI, nuScenes, and the Waymo Perception Dataset), collected by human-driving mode or unidentified driving mode, can only serve as early training for the perception and prediction of autonomous vehicles (AVs). To evaluate the real behavioral safety of AVs controlled in the black box, we present the first end-to-end benchmark dataset collected entirely by autonomous-driving mode in the real world. This dataset contains over 100 hours of naturalistic data from multiple production autonomous-driving vehicle models in the market. We segment the original data into 32,727 key frames, each consisting of four synchronized camera images and high-precision GNSS/IMU data (0.8 cm localization accuracy). For each key frame, 20 Hz vehicle trajectories spanning the past 6 s and future 5 s are provided, along with detailed 2D annotations of surrounding…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Human-Automation Interaction and Safety · Social Robot Interaction and HRI
