Fall detection using smartphone application

University essay from KTH/Skolan för elektroteknik och datavetenskap (EECS)

Abstract: Accidents related to falling is a major issue in society, and it is important that a person that suffers an accident is aided as quickly as possible. The purpose of this study is to examine the possibility of using sensors available in smartphones to implement an application for fall detection. The chosen method is a literature study followed by a case study. The literature study is performed to find existing solutions for implementing fall detection in a mobile application and one solution is chosen as a starting point. The case study consists of two parts. In the first part the algorithm found during the literature study is implemented and experiments are performed with purpose to improve the solution. The second part serves to evaluate the implemented solution with respect to accuracy and battery life. The proposed solution is to use accelerometer data coming from the embedded sensors available in smartphones. This data can be fed into a finite state machine to detect possible fall candidates. Properties are extracted from the data, which is analyzed by a pre-trained neural network that perform a classification of the event. The evaluation of the accuracy shows that the iOS and Android implementation reached a success rate in classifying events correctly of 91% and 83%, respectively. The evaluation of battery life shows that this solution can be implemented without consuming to much battery power.

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