Title :
Hybrid object models for robot vision
Author_Institution :
Heinz Nixdorf Inst., Paderborn Univ., Germany
fDate :
31 Aug-4 Sep 1998
Abstract :
This paper concentrates on object models for the recognition of complex three-dimensional objects with a robot vision system. After giving a short overview on existing approaches, some demands on object models for robot vision systems are formulated. Afterwards, an approach of hybrid object models that fulfils all of these demands is presented. These hybrid models integrate neurobiologically motivated object representations by model neurons similar to complex cortical cells and the explicit representation of objects by semantic networks, a well known methodology in the field of symbolic artificial intelligence. Thereby, one can combine the attribute of robustness and fault tolerance of neural networks with the well structured design of symbolic processing. Additionally, the procedural interface of semantic networks allows the development of active vision systems and the implementation of reliable recognition on the basis of multiple viewpoints
Keywords :
active vision; artificial intelligence; neural nets; object recognition; robot vision; semantic networks; active vision systems; complex cortical cells; complex three-dimensional object recognition; fault tolerance; hybrid object models; multiple viewpoints; neurobiologically motivated object representations; object representation; procedural interface; robot vision; robustness; semantic networks; symbolic artificial intelligence; symbolic processing; Artificial neural networks; Cognitive robotics; Data mining; Image reconstruction; Knowledge based systems; Layout; Machine vision; Object recognition; Robot vision systems; Robustness;
Conference_Titel :
Industrial Electronics Society, 1998. IECON '98. Proceedings of the 24th Annual Conference of the IEEE
Conference_Location :
Aachen
Print_ISBN :
0-7803-4503-7
DOI :
10.1109/IECON.1998.724033