A comparative study of classification methods for fall detection

Signal Processing and Communications Applications Conference(2014)

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摘要
A comparative study of various fall detection algorithms based upon measurements of a wearable tri-axial accelerometer unit is presented in this paper. Least squares support vector machine, neural network and rule-based classifiers are evaluated in the scope of this paper. Training and testing data sets, which are necessary for design and testing of the classifiers, respectively, are collected from 7 people. Each subject exercised simulated falls and other daily life activities such as walking, sitting etc. Among three methods, support vector machine-based classifier is found to be superior in terms of both correct detection and false alarm ratio as 87,76% precision and 89.47% specifity. Meanwhile, best sensitivity is achieved with rule-based classifiers.
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关键词
accelerometers,biomedical measurement,gait analysis,health care,least squares approximations,neural nets,support vector machines,classification method,daily life activities,fall detection algorithms,false alarm ratio,least squares support vector machine,neural network,rule-based classifiers,simulated falls,sitting,support vector machine-based classifier,walking,wearable tri-axial accelerometer unit,accelerometer,fall detection,neural networks,support vector machines
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