The nuScenes dataset is a large-scale autonomous driving dataset. The dataset has 3D bounding boxes for 1000 scenes collected in Boston and Singapore. Each scene is 20 seconds long and annotated at 2Hz. This results in a total of 28130 samples for training, 6019 samples for validation and 6008 samples for testing. The dataset has the full autonomous vehicle data suite: 32-beam LiDAR, 6 cameras and radars with complete 360° coverage. The 3D object detection challenge evaluates the performance on 10 classes: cars, trucks, buses, trailers, construction vehicles, pedestrians, motorcycles, bicycles, traffic cones and barriers.
1,574 PAPERS • 20 BENCHMARKS
The dataset contains synthetic training, validation and test data for occupancy grid mapping from lidar point clouds. Additionally, real-world lidar point clouds from a test vehicle with the same lidar setup as the simulated lidar sensor is provided. Point clouds are stored as PCD files and occupancy grid maps are stored as PNG images whereas one image channel describes evidence for a free and another one describes evidence for occupied cell state.
1 PAPER • NO BENCHMARKS YET