A vision system for symbolic interpretation of dynamic scenes using arsom
Antonio Chella, Donatella Guarino, Ignazio Infantino, Roberto Pirrone
- Year
- 2001
- Citations
- 2
- Access
- Open access
Abstract
We describe an artificial high-level vision system for the symbolic interpretation of data coming from a video camera that acquires the image sequences of moving scenes. The system is based on ARSOM neural networks that learn to generate the perception-grounded predicates obtained by image sequences. The ARSOM neural networks also provide a three-dimensional estimation of the movements of the relevant objects in the scene. The vision system has been employed in two scenarios: the monitoring of a robotic arm suitable for space operations, and the surveillance of an electronic data processing (EDP) center.
Keywords
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