Home /Research /Haptic object recognition for multi-fingered robot hands
HRI

Haptic object recognition for multi-fingered robot hands

Stefan Escaida Navarro, Nicolas Gorges, Heinz Wörn, Julian Schill, Tamim Asfour, Rüdiger Dillmann

Year
2012
Citations
48

Abstract

In this paper, we present an approach for haptic object recognition and its evaluation on multi-fingered robot hands. The recognition approach is based on extracting key features of tactile and kinesthetic data from multiple palpations using a clustering algorithm. A multi-sensory object representation is built by fusion of tactile and kinesthetic features. We evaluated our approach on three robot hands and compared the recognition performance using object sets consisting of daily household objects. Experimental results using the five-fingered hand of the humanoid robot ARMAR, the three-fingered Schunk Dexterous Hand 2 and a parallel Gripper are performed. The results show that the proposed approach generalizes to different robot hands.

Keywords

Kinesthetic learningArtificial intelligenceComputer visionHumanoid robotComputer scienceObject (grammar)Haptic technologyRobotCognitive neuroscience of visual object recognitionRepresentation (politics)

Related papers

Browse all HRI papers