Home /Research /2024 IEEE International Conference on Robotics and Automation (ICRA)
OTHER

2024 IEEE International Conference on Robotics and Automation (ICRA)

Year
2024
Citations
311

Abstract

This dataset consists of semantically segmented LiDAR point clouds of the GOOSE and GOOSE-Ex dataset. The original point clouds annotations segmented all points into 64 semantic classes, but for the GOOSE 3D Semantic Segmentation Challenge on CodaBench we consolidated the point cloud data into 8 superclasses (+ other class): category_name,label_key,hex other,0,#A9A9A9 artificial_structures,1,#DE88DE artificial_ground,2,#EBFF3B natural_ground,3,#A1887F obstacle,4,#FFC107 vehicle,5,#F44336 vegetation,6,#4CAF50 human,7,#8FB0FF sky,8,#2196F3 The dataset contains 13006 annotated point clouds in total, stored in the .label format as is done in the SemanticKITTI dataset. import numpy as np # reading a .label file label = np.fromfile(filename, dtype=np.uint32) label = label.reshape((-1))# extract the semantic and instance label IDs sem_label = label & 0xFFFF # semantic label in lower half inst_label = label >> 16 # instance id in upper half This dataset only contains the annotations, to download the LiDAR point cloud data, please visit the download dataset page in the GOOSE dataset documentation.

Keywords

AutomationRoboticsArtificial intelligenceComputer scienceEngineeringRobotMechanical engineering

Related papers

Browse all OTHER papers