Object-independent human-to-robot handovers using real time robotic vision
Rosenberger, Patrick, Cosgun, Akansel, Newbury, Rhys, Kwan, Jun, Ortenzi, Valerio, Corke, Peter, and Grafinger, Manfred

Publication: IEEE Robotics and Automation Letters

Abstract: We present an approach for safe and object independent human-to-robot handovers using real time robotic vision and manipulation. We aim for general applicability with a generic object detector, a fast grasp selection algorithm and by using a single gripper-mounted RGB-D camera, hence not relying on external sensors. The robot is controlled via visual servoing towards the object of interest. Putting a high emphasis on safety, we use two perception modules: human body part segmentation and hand/finger segmentation. Pixels that are deemed to belong to the human are filtered out from candidate grasp poses, hence ensuring that the robot safely picks the object without colliding with the human partner. The grasp selection and perception modules run concurrently in real-time, which allows monitoring of the progress. In experiments with 13 objects, the robot was able to successfully take the object from the human in 81.9% of the trials.

Bibtex:

@article{rosenberger2020object,
  title = {Object-independent human-to-robot handovers using real time robotic vision},
  author = {Rosenberger, Patrick and Cosgun, Akansel and Newbury, Rhys and Kwan, Jun and Ortenzi, Valerio and Corke, Peter and Grafinger, Manfred},
  journal = {IEEE Robotics and Automation Letters},
  volume = {6},
  number = {1},
  pages = {17--23},
  year = {2020},
  publisher = {IEEE},
      }