Context-based selection and execution of robot perception graphs
Nico Hochgeschwender, Miguel Olivares-Mendez, Holger Voos, Gerhard K. Kraetzschmar
- Year
- 2015
- Citations
- 7
Abstract
To perform a wide range of tasks service robots need to robustly extract knowledge about the world from the data perceived through the robot's sensors even in the presence of varying context-conditions. This makes the design and development of robot perception architectures a challenging exercise. In this paper we propose a robot perception architecture which enables to select and execute at runtime different perception graphs based on monitored context changes. To achieve this the architecture is structured as a feedback loop and contains a repository of different perception graph configurations suitable for various context conditions.
Keywords
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