English

Human Grasp Classification for Reactive Human-to-Robot Handovers

Robotics 2020-03-16 v1 Computer Vision and Pattern Recognition

Abstract

Transfer of objects between humans and robots is a critical capability for collaborative robots. Although there has been a recent surge of interest in human-robot handovers, most prior research focus on robot-to-human handovers. Further, work on the equally critical human-to-robot handovers often assumes humans can place the object in the robot's gripper. In this paper, we propose an approach for human-to-robot handovers in which the robot meets the human halfway, by classifying the human's grasp of the object and quickly planning a trajectory accordingly to take the object from the human's hand according to their intent. To do this, we collect a human grasp dataset which covers typical ways of holding objects with various hand shapes and poses, and learn a deep model on this dataset to classify the hand grasps into one of these categories. We present a planning and execution approach that takes the object from the human hand according to the detected grasp and hand position, and replans as necessary when the handover is interrupted. Through a systematic evaluation, we demonstrate that our system results in more fluent handovers versus two baselines. We also present findings from a user study (N = 9) demonstrating the effectiveness and usability of our approach with naive users in different scenarios. More results and videos can be found at http://wyang.me/handovers.

Keywords

Cite

@article{arxiv.2003.06000,
  title  = {Human Grasp Classification for Reactive Human-to-Robot Handovers},
  author = {Wei Yang and Chris Paxton and Maya Cakmak and Dieter Fox},
  journal= {arXiv preprint arXiv:2003.06000},
  year   = {2020}
}
R2 v1 2026-06-23T14:13:18.998Z