Ontology-Based High-Level Context Inference for Human Behavior Identification
Metadatos
Mostrar el registro completo del ítemAutor
Villalonga Palliser, Claudia; Razzaq, Muhammad Asif; Khan, Wajahat Ali; Pomares Cintas, Héctor Emilio; Rojas Ruiz, Ignacio; Lee, Sungyoung; Baños Legrán, OrestiEditorial
MDPI
Materia
Context recognition Context inference Ontologies
Fecha
2016-09-29Referencia bibliográfica
Villalonga, C.; Razzaq, M.A.; Khan, W.A.; Pomares, H.; Rojas, I.; Lee, S.; Banos, O. Ontology-Based High-Level Context Inference for Human Behavior Identification. Sensors 2016, 16, 1617. https://doi.org/10.3390/s16101617
Patrocinador
Industrial Core Technology Development Program (10049079, Develop of mining core technology exploiting personal big data) funded by the Ministry of Trade, Industry and Energy (MOTIE, Korea); Spanish Ministry of Economy and Competitiveness (MINECO) Project TIN2015-71873-R together with the European Fund for Regional Development (FEDER)Resumen
Recent years have witnessed a huge progress in the automatic identification of individual
primitives of human behavior, such as activities or locations. However, the complex nature of human
behavior demands more abstract contextual information for its analysis. This work presents an
ontology-based method that combines low-level primitives of behavior, namely activity, locations
and emotions, unprecedented to date, to intelligently derive more meaningful high-level context
information. The paper contributes with a new open ontology describing both low-level and
high-level context information, as well as their relationships. Furthermore, a framework building on
the developed ontology and reasoning models is presented and evaluated. The proposed method
proves to be robust while identifying high-level contexts even in the event of erroneously-detected
low-level contexts. Despite reasonable inference times being obtained for a relevant set of users and
instances, additional work is required to scale to long-term scenarios with a large number of users.