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KANT: A tool for Grounding and Knowledge Management

2022-04-18 18:02:35
Miguel Á. González-Santamarta, Francisco J. Rodríguez-Lera, Francisco Martín, Camino Fernández, Vicente Matellán

Abstract

The intelligent robotics community usually organizes knowledge into symbolic and sub-symbolic levels. These two levels establish the set of symbols and rules for manipulating knowledge based on their (symbol system - dictionary). Thus, the correspondences -- Grounding or knowledge representation -- require specific software techniques for anchoring continuous and discrete state variables between these two levels. This paper presents the design and evaluation of an Open Source tool called KANT(Knowledge mAnagemeNT) to let different components of the system architecture controlling the robot query, save, edit, and delete the data from the Knowledge Base without having to worry about the type and the implementation of the source data. Using KANT, components managing subsymbolic information can smoothly interact with symbolic components. Besides, implementation mechanisms used in KANT, such as the use of in-memory and non-SQL databases, improve the performance of the knowledge management systems in ROS middleware, as shown by the evaluations presented in this work.

Abstract (translated)

URL

https://arxiv.org/abs/2204.08495

PDF

https://arxiv.org/pdf/2204.08495.pdf


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