4.7 Article

Online personal risk detection based on behavioural and physiological patterns

Journal

INFORMATION SCIENCES
Volume 384, Issue -, Pages 281-297

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.ins.2016.08.006

Keywords

Pattern recognition; Physiological patterns; Behavioural patterns; Personal risk detection; Anomaly detection; One-class classification

Funding

  1. CONACYT [515676]

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We define personal risk detection as the timely identification of when someone is in the midst of a dangerous situation, for example, a health crisis or a car accident, events that may jeopardize a person's physical integrity. We work under the hypothesis that a risk prone situation produces sudden and significant deviations in standard physiological and behavioural user patterns. These changes can be captured by a group of sensors, such as the accelerometer, gyroscope, and heart rate. We introduce a dataset, called PRIDE, which provides a baseline for the development and the fair comparison of personal risk detection mechanisms. PRIDE contains information on 18 test subjects; for each subject, it includes partial information about the user's behavioural and physiological patterns, as captured by Microsoft Band. PRIDE test subject records include sensor readings of not only when a subject is carrying out ordinary daily life activities, but also when exposed to a stressful scenario, thereby simulating a dangerous or abnormal situation. We show how to use PRIDE to develop a personal risk detection mechanism; to accomplish this, we have tackled risk detection as a one-class classification problem. We have trained several classifiers based only on the daily behaviour of test subjects. Father, we tested the accuracy of the classifiers to detect anomalies that were not included in the training process of the classifiers. We used a number of one-class classifiers, namely: SVM, Parzen, and two versions of Parzen based on k-means. While there is still room for improvement, our results are encouraging: they support our hypothesis that abnormal behaviour can be automatically detected. (C) 2016 The Authors. Published by Elsevier Inc. This is an open access article under the CC BY-NC-ND license.

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