A Survey on Ontologies for Human Behavior Recognition
Metadatos
Afficher la notice complèteAuteur
Díaz Rodríguez, Natalia Ana; Pegalajar Cuéllar, Manuel; Lilius, Johan; Delgado Calvo-Flores, MiguelEditorial
ACM
Date
2014Résumé
Describing user activity plays an essential role in ambient intelligence. In this work, we review different
methods for human activity recognition, classified as data-driven and knowledge-based techniques. We focus on context ontologies whose ultimate goal is the tracking of human behavior. After studying upper and domain ontologies, both useful for human activity representation and inference, we establish an evaluation criterion to assess the suitability of the different candidate ontologies for this purpose. As a result, any missing features, which are relevant for modeling daily human behaviors, are identified as future challenges.