Detection of activities in bathrooms through deep learning and environmental data graphics images
Metadatos
Mostrar el registro completo del ítemAutor
Marín-García, David; Bienvenido Huertas, José David; Moyano, Juan; Rubio-Bellido, Carlos; Rodríguez-Jiménez, Carlos E.Editorial
Elsevier
Materia
Activity recognition Bathrooms Environment
Fecha
2024-02-28Referencia bibliográfica
Marín-García, Carlos, et al. Detection of activities in bathrooms through deep learning and environmental data graphics images. Heliyon 10 (2024) e26942 [10.1016/j.heliyon.2024.e26942]
Patrocinador
VI Own Research and Transfer Plan of the University of xxxxResumen
Automatic detection activities in indoor spaces has been and is a matter of great interest. Thus, in
the field of health surveillance, one of the spaces frequently studied is the bathroom of homes and
specifically the behaviour of users in the said space, since certain pathologies can sometimes be
deduced from it. That is why, the objective of this study is to know if it is possible to automatically
classify the main activities that occur within the bathroom, using an innovative methodology with
respect to the methods used to date, based on environmental parameters and the application of
machine learning algorithms, thus allowing privacy to be preserved, which is a notable
improvement in relation to other methods. For this, the methodology followed is based on the
novel application of a pre-trained convolutional network for classifying graphs resulting from the
monitoring of the environmental parameters of a bathroom. The results obtained allow us to
conclude that, in addition to being able to check whether environmental data are adequate for
health, it is possible to detect a high rate of true positives (around 80%) in some of the most
frequent and important activities, thus facilitating its automation in a very simple and economical
way.