CARD: A Multi-Modal Automotive Dataset for Dense 3D Reconstruction in Challenging Road Topography

📅 2026-05-06
📈 Citations: 0
Influential: 0
📄 PDF

career value

237K/year
📝 Abstract
Autonomous driving must operate across diverse surfaces to enable safe mobility. However, most driving datasets are captured on well-paved flat roads. Moreover, recent driving datasets primarily provide sparse LiDAR ground truth for images, which is insufficient for assessing fine-grained geometry in depth estimation and completion. To address these gaps, we introduce CARD, a multi-modal driving dataset that delivers quasi-dense 3D ground truth across continuous sequences rich in speed bumps, potholes, irregular surfaces and off-road segments. Our sensor suite includes synchronized global-shutter stereo cameras, front and rear LiDARs, 6-DoF poses from LiDAR-inertial odometry, per-wheel motion traces, and full calibration. Notably, our multi-LiDAR fusion yields ~500K valid depth pixels per frame, about 6.5x more than KITTI Depth Completion and 10x more on average than other public driving datasets. The dataset spans ~110 km and 4.7 hours across Germany and Italy. In addition, CARD provides 2D bounding boxes targeting road-topography irregularities, enabling accurate benchmarking for both geometry and perception tasks. Furthermore, we establish a standardized evaluation protocol for road surface irregularities on CARD and benchmark state-of-the-art depth estimation models to provide strong baselines. The CARD dataset is hosted on https://huggingface.co/CARD-Data.
Problem

Research questions and friction points this paper is trying to address.

autonomous driving
dense 3D reconstruction
road topography
depth completion
multi-modal dataset
Innovation

Methods, ideas, or system contributions that make the work stand out.

multi-modal dataset
quasi-dense 3D reconstruction
multi-LiDAR fusion
road topography irregularities
depth completion benchmark
🔎 Similar Papers