This paper proposes a system for recognizing hu- man complex activities by using unobtrusive sensors such as smartphone, smartwatch and bluetooth beacons. The method encapsulates two classification stages. The former is composed of two parallel processes: the Main Activity Detection (MAD) and the Room Detection (RD). The latter implements the Complex Activity Detection (CAD) process by exploiting the outputs of the first stage and the accelerometer data of the smartwatch. The cascade classification approach that combines the room detection with the main/complex activities recognition task constitutes the novelty of the work. Preliminary results demonstrate the reliability of the system in terms of accuracy and macro-F1 score.

Complex Activity Recognition System Based on Cascade Classifiers and Wearable Device Data / Ciabattoni, Lucio; Foresi, Gabriele; Monteriù, Andrea; Proietti Pagnotta, Daniele; Romeo, Luca; Spalazzi, Luca; De Cesare, Alex. - ELETTRONICO. - (2018), pp. 1-2. (Intervento presentato al convegno 36th IEEE International Conference on Consumer Electronics (ICCE) tenutosi a Las Vegas, USA nel January 12-14, 2018) [10.1109/ICCE.2018.8326283].

Complex Activity Recognition System Based on Cascade Classifiers and Wearable Device Data

Ciabattoni, Lucio
;
Foresi, Gabriele
;
Monteriù, Andrea
;
Proietti Pagnotta, Daniele
;
Romeo, Luca
;
Spalazzi, Luca
;
2018-01-01

Abstract

This paper proposes a system for recognizing hu- man complex activities by using unobtrusive sensors such as smartphone, smartwatch and bluetooth beacons. The method encapsulates two classification stages. The former is composed of two parallel processes: the Main Activity Detection (MAD) and the Room Detection (RD). The latter implements the Complex Activity Detection (CAD) process by exploiting the outputs of the first stage and the accelerometer data of the smartwatch. The cascade classification approach that combines the room detection with the main/complex activities recognition task constitutes the novelty of the work. Preliminary results demonstrate the reliability of the system in terms of accuracy and macro-F1 score.
2018
36th IEEE International Conference on Consumer Electronics (ICCE)
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11566/255085
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