Generalized Grasping for Mechanical Grippers for Unknown Objects with Partial Point Cloud Representations
Abstract
We present a generalized grasping algorithm that uses point clouds (i.e. a group of points and their respective surface normals) to discover grasp pose solutions for multiple grasp types, executed by a mechanical gripper, in near real-time. The algorithm introduces two ideas: 1) a histogram of finger contact normals is used to represent a grasp 'shape' to guide a gripper orientation search in a histogram of object(s) surface normals, and 2) voxel grid representations of gripper and object(s) are cross-correlated to match finger contact points, i.e. grasp 'size', to discover a grasp pose. Constraints, such as collisions with neighbouring objects, are optionally incorporated in the cross-correlation computation. We show via simulations and experiments that 1) grasp poses for three grasp types can be found in near real-time, 2) grasp pose solutions are consistent with respect to voxel resolution changes for both partial and complete point cloud scans, and 3) a planned grasp is executed with a mechanical gripper.
Cite
@article{arxiv.2006.12676,
title = {Generalized Grasping for Mechanical Grippers for Unknown Objects with Partial Point Cloud Representations},
author = {Michael Hegedus and Kamal Gupta and Mehran Mehrandezh},
journal= {arXiv preprint arXiv:2006.12676},
year = {2020}
}
Comments
8 pages, 12 figures, submitted to 2020 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS 2018) on 2/24/2020