4DLidarOpen: An Open 4D FMCW Lidar Dataset for Motion-Aware Autonomous Driving
Kane Qian, Xin Zhao, Yining Shi, Rujun Yan, Zhengqing Pan, Kaojin Zhu, Mengmeng Yang, Kai Sun, Diange Yang, and Kun Jiang

TL;DR
4DLidarOpen is a comprehensive open dataset featuring 4D FMCW Lidar data with velocity measurements, designed to advance motion-aware perception and planning in autonomous driving through multi-sensor data and benchmarks.
Contribution
The paper introduces a large-scale multi-modal dataset with 4D FMCW Lidar data, including velocity information, and establishes benchmarks for various perception and prediction tasks in autonomous driving.
Findings
Velocity measurements improve dynamic scene understanding.
Velocity-aware representations enhance motion prediction accuracy.
Multi-sensor data supports robust perception in complex urban scenarios.
Abstract
We present 4DLidarOpen, a large-scale open multi-modal dataset for autonomous driving, centered on 4D frequency-modulated continuous-wave (FMCW) Lidar sensing. Unlike conventional time-of-flight Lidar datasets that mainly provide geometric measurements, 4DLidarOpen includes point-wise radial velocity measurements from a forward-facing 4D FMCW Lidar, together with multiple Lidars of different types, including rotating, solid-state, and blind-spot variants, surround-view cameras, and 6-DOF ego-vehicle poses. The dataset was collected in complex urban environments in Beijing and covers dense pedestrian interactions, congested traffic, high-speed driving, and unprotected maneuvers. 4DLidarOpen provides synchronized multi-sensor data and 3D bounding-box annotations with persistent track IDs across five object categories. A hybrid annotation strategy is adopted, where large-scale…
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