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      Fall detection system for elderly people using IoT and ensemble machine learning algorithm

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          An introduction to ROC analysis

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            Is Open Access

            Detecting Falls with Wearable Sensors Using Machine Learning Techniques

            Falls are a serious public health problem and possibly life threatening for people in fall risk groups. We develop an automated fall detection system with wearable motion sensor units fitted to the subjects' body at six different positions. Each unit comprises three tri-axial devices (accelerometer, gyroscope, and magnetometer/compass). Fourteen volunteers perform a standardized set of movements including 20 voluntary falls and 16 activities of daily living (ADLs), resulting in a large dataset with 2520 trials. To reduce the computational complexity of training and testing the classifiers, we focus on the raw data for each sensor in a 4 s time window around the point of peak total acceleration of the waist sensor, and then perform feature extraction and reduction. Most earlier studies on fall detection employ rule-based approaches that rely on simple thresholding of the sensor outputs. We successfully distinguish falls from ADLs using six machine learning techniques (classifiers): the k-nearest neighbor (k-NN) classifier, least squares method (LSM), support vector machines (SVM), Bayesian decision making (BDM), dynamic time warping (DTW), and artificial neural networks (ANNs). We compare the performance and the computational complexity of the classifiers and achieve the best results with the k-NN classifier and LSM, with sensitivity, specificity, and accuracy all above 99%. These classifiers also have acceptable computational requirements for training and testing. Our approach would be applicable in real-world scenarios where data records of indeterminate length, containing multiple activities in sequence, are recorded.
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              WiFall: Device-Free Fall Detection by Wireless Networks

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                Author and article information

                Contributors
                (View ORCID Profile)
                Journal
                Personal and Ubiquitous Computing
                Pers Ubiquit Comput
                Springer Science and Business Media LLC
                1617-4909
                1617-4917
                November 2019
                January 2 2019
                November 2019
                : 23
                : 5-6
                : 801-817
                Article
                10.1007/s00779-018-01196-8
                d87244cc-3271-4130-b450-fc3bcc9e99c1
                © 2019

                http://www.springer.com/tdm

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