Home /Research /Understanding Object Weight from Human and Humanoid Lifting Actions
HRI

Understanding Object Weight from Human and Humanoid Lifting Actions

Alessandra Sciutti, Laura Patanè, Francesco Nori, Giulio Sandini

Year
2014
Citations
43

Abstract

Humans are very good at interacting with each other. This natural ability depends, among other factors, on an implicit communication mediated by motion observation. By simple action observation we can easily infer not only the goal of an agent, but often also some “hidden” properties of the object he is manipulating, as its weight or its temperature. This implicit understanding is developed early in childhood and is supposedly based on a common motor repertoire between the cooperators. In this paper, we have investigated whether and under which conditions it is possible for a humanoid robot to foster the same kind of automatic communication, focusing on the ability to provide cues about object weight with action execution. We have evaluated on which action properties weight estimation is based in humans and we have accordingly designed a set of simple robotic lifting behaviors. Our results show that subjects can reach a performance in weight recognition from robot observation comparable to that obtained during human observation, with no need of training. These findings suggest that it is possible to design robot behaviors that are implicitly understandable by nonexpert partners and that this approach could be a viable path to obtain more natural human-robot collaborations.

Keywords

Humanoid robotAction (physics)Computer scienceRobotObject (grammar)Artificial intelligenceSet (abstract data type)Simple (philosophy)Human–computer interactionRepertoire

Related papers

Browse all HRI papers