GraspClutter6D
3d meshes6DImagesRGB-DCreative Commons NonCommercial licenseIntroduced 2025-04-09
GraspClutter6D is a large-scale real-world dataset for robust object perception and robotic grasping in cluttered environments. It features 1,000 highly cluttered scenes with dense arrangements (average 14.1 objects/scene with 62.6% occlusion), 200 household, industrial, and warehouse objects captured in 75 diverse environment configurations (bins, shelves, and tables), multi-view data from 4 RGB-D cameras (RealSense D415, D435, Azure Kinect, and Zivid One+), and comprehensive annotations including 736K 6D object poses and 9.3 billion feasible robotic grasps for 52K RGB-D images. The dataset provides a challenging testbed for segmentation, 6D pose estimation, and grasp detection algorithms in realistic cluttered scenarios.