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 human handover


A Multimodal Data Set of Human Handovers with Design Implications for Human-Robot Handovers

Khanna, Parag, Björkman, Mårten, Smith, Christian

arXiv.org Artificial Intelligence

Handovers are basic yet sophisticated motor tasks performed seamlessly by humans. They are among the most common activities in our daily lives and social environments. This makes mastering the art of handovers critical for a social and collaborative robot. In this work, we present an experimental study that involved human-human handovers by 13 pairs, i.e., 26 participants. We record and explore multiple features of handovers amongst humans aimed at inspiring handovers amongst humans and robots. With this work, we further create and publish a novel data set of 8672 handovers, bringing together human motion and the forces involved. We further analyze the effect of object weight and the role of visual sensory input in human-human handovers, as well as possible design implications for robots. As a proof of concept, the data set was used for creating a human-inspired data-driven strategy for robotic grip release in handovers, which was demonstrated to result in better robot to human handovers.


Data-driven Grip Force Variation in Robot-Human Handovers

Khanna, Parag, Björkman, Mårten, Smith, Christian

arXiv.org Artificial Intelligence

Abstract-- Handovers frequently occur in our social environments, making it imperative for a collaborative robotic system to master the skill of handover. In this work, we aim to investigate the relationship between the grip force variation for a human giver and the sensed interaction force-torque in human-human handovers, utilizing a data-driven approach. A Long-Short Term Memory (LSTM) network was trained to use the interaction force-torque in a handover to predict the human grip force variation in advance. In a handover, the giver holds and carries the object It was shown that a linear relation exists between load shared to a suitable, pre-determined handover location while the and grip force of the human giver. This finding was used in taker reaches for the object.