On Process Recognition by Logical Inference.
Arne Kreutzmann, Immo Colonius, Lutz Frommberger, Frank Dylla, Christian Freksa, Diedrich Wolter
- Year
- 2011
- Citations
- 4
Abstract
The ability to recognize and to understand processes allows a robot operating in a dynamic environment to rationally respond to dynamic changes. In this paper we demonstrate how a mobile robot can recognize storage processes in a warehouse environment, solely using perception data and an abstract specification of the processes. We specify processes symbolically in linear temporal logic (LTL) and pose process recognition as a model verification problem. The key feature of our logic based approach is its ability to infer missing pieces of information by logic-based reasoning. The evaluation demonstrates that this approach is able to reconstruct histories of good movements in a lab-simulated warehouse.
Keywords
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