Artikel
ART-based fusion of multi-modal perception for robots
Elmar Berghöfer; Denis Schulze; Christian Rauch; Marko Tscherepanow; Tim Köhler; Sven Wachsmuth
In: Neurocomputing, Vol. o.A. Pages 11-22, Elsevier, 5/2013.
Abstract
Robotic application scenarios in uncontrolled environments pose high demands on mobile robots. This is especially true if human-robot interaction or robotrobot interaction is involved. Here, potential interaction partners need to be identied. To tackle challenges like this, robots make use of dierent sensory systems. In many cases, these robots have to deal with erroneous data from dierent sensory systems which often are processed separately. A possible strategy to improve identication results is to combine dierent processing results of complementary sensors. Their relation is often hard coded and dicult to learn incrementally if new kinds of objects or events occur. In this paper, we present a new fusion strategy which we call the Simplied Fusion ARTMAP (SiFuAM) which is very fexible and therefore can be easily adapted to new domains or sensor congurations. As our approach is based on the Adaptive Resonance Theory (ART) it is inherently capable of incremental on-line learning. We show its applicability in dierent robotic scenarios and platforms and give an overview of its performance.
