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  4. Transforming Web Knowledge into Actionable Knowledge Graphs for Robot Manipulation Tasks
 
Zitierlink DOI
10.26092/elib/4239
Verlagslink DOI
https://ceur-ws.org/Vol-3749/akr3-tutorial.pdf

Transforming Web Knowledge into Actionable Knowledge Graphs for Robot Manipulation Tasks

Veröffentlichungsdatum
2024
Autoren
Beetz, Michael  
Cimiano, Philipp  
Kümpel, Michaela  
Motta, Enrico  
Tiddi, Ilaria  
Töberg, Jan-Philipp  
Zusammenfassung
One of the visions in AI based robotics are household robots that can autonomously handle a variety of meal preparation tasks. Based on this scenario, we present a best practice tutorial on how to create actionable knowledge graphs that a robot can use for execution of task variations of cutting actions. We implemented a solution for this task that integrates all necessary software components in the framework of the robot control process. In the context of this tutorial, we focus on knowledge acquisition, knowledge representation and reasoning, and simulating robot action execution, bringing these components together into a learning environment that – in the extended version – introduces the whole control process of Cognitive Robotics. In particular, the Tutorial will detail necessary concepts a knowledge graph should include for robot action execution, how web knowledge can be automatically acquired for the domain of cutting fruits, and how the created knowledge graph can be used to let robots execute tasks like slicing a cucumber or quartering an apple. The learning environment follows an immersive approach, using a physics-based simulation environment for visualization purposes that helps to illustrate the concepts taught in the tutorial.
Schlagwörter
Knowledge Representation

; 

Cognitive Robotics

; 

Web Knowledge

; 

Actionable Knowledge

; 

Knowledge Extraction
Verlag
RWTH Aachen
Institution
Universität Bremen  
Fachbereich
Fachbereich 03: Mathematik/Informatik (FB 03)  
Institute
Institute for Artificial Intelligence  
Dokumenttyp
Konferenzbeitrag
Zeitschrift/Sammelwerk
ESWC-JP 2024 = CEUR Workshop Proceedings, Band 3749
Seitenzahl
5
Zweitveröffentlichung
Ja
Dokumentversion
Published Version
Lizenz
https://creativecommons.org/licenses/by/4.0/
Sprache
Englisch
Dateien
Lade...
Vorschaubild
Name

Beetz et al_Transforming Web Knowledge into Actionable Knowledge Graphs_2024_published-version.pdf

Size

2.24 MB

Format

Adobe PDF

Checksum

(MD5):934e4f96464a99d3ce5438fde1e2c4e8

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