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Context aware adaptable approach for fall detection bases on Smart textile

Authors :
Mezghani, Neila
Ouakrim, Youssef
Islam, Md Rabaul
Yared, Rami
Abdulrazak, Bessam
Mezghani, Neila
Ouakrim, Youssef
Islam, Md Rabaul
Yared, Rami
Abdulrazak, Bessam
Publication Year :
2017

Abstract

Fall detection is very important to provide adequate interventions for aging people in risk situations. Existing techniques focus on detecting falls using wearable or ambient sensors. However, they do not consider fall orientations. In this paper, we present our novel fall detection system based on smart textiles and machine learning techniques. Using a non-linear support vector machine, we determine the fall orientation which will be helpful to study the impact of a fall according to its orientation. Additionally, we classify falls based on their orientations among 11 classes (moving upstairs, moving downstairs, walking, running, standing, fall forward, fall backward, fall right, fall left, lying, sitting). Results show the reliability of the proposed approach for falls detection (98% of accuracy, 97.5% of sensitivity and 98.5% specificity) and also for fall orientation (98.5% of accuracy).

Details

Database :
OAIster
Notes :
pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1450608247
Document Type :
Electronic Resource