English

Using Geometry to Detect Grasps in 3D Point Clouds

Robotics 2015-04-30 v3

Abstract

This paper proposes a new approach to detecting grasp points on novel objects presented in clutter. The input to our algorithm is a point cloud and the geometric parameters of the robot hand. The output is a set of hand configurations that are expected to be good grasps. Our key idea is to use knowledge of the geometry of a good grasp to improve detection. First, we use a geometrically necessary condition to sample a large set of high quality grasp hypotheses. We were surprised to find that using simple geometric conditions for detection can result in a relatively high grasp success rate. Second, we use the notion of an antipodal grasp (a standard characterization of a good two fingered grasp) to help us classify these grasp hypotheses. In particular, we generate a large automatically labeled training set that gives us high classification accuracy. Overall, our method achieves an average grasp success rate of 88% when grasping novels objects presented in isolation and an average success rate of 73% when grasping novel objects presented in dense clutter. This system is available as a ROS package at http://wiki.ros.org/agile_grasp.

Keywords

Cite

@article{arxiv.1501.03100,
  title  = {Using Geometry to Detect Grasps in 3D Point Clouds},
  author = {Andreas ten Pas and Robert Platt},
  journal= {arXiv preprint arXiv:1501.03100},
  year   = {2015}
}
R2 v1 2026-06-22T08:00:07.179Z