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An Analysis on Sensor Locations of the Human Body for Wearable Fall Detection Devices: Principles and Practice

机译:可穿戴式跌倒检测设备的人体传感器位置分析:原理与实践

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Wearable devices for fall detection have received attention in academia and industry, because falls are very dangerous, especially for elderly people, and if immediate aid is not provided, it may result in death. However, some predictive devices are not easily worn by elderly people. In this work, a huge dataset, including 2520 tests, is employed to determine the best sensor placement location on the body and to reduce the number of sensor nodes for device ergonomics. During the tests, the volunteer’s movements are recorded with six groups of sensors each with a triaxial (accelerometer, gyroscope and magnetometer) sensor, which is placed tightly on different parts of the body with special straps: head, chest, waist, right-wrist, right-thigh and right-ankle. The accuracy of individual sensor groups with their location is investigated with six machine learning techniques, namely the k -nearest neighbor ( k -NN) classifier, Bayesian decision making (BDM), support vector machines (SVM), least squares method (LSM), dynamic time warping (DTW) and artificial neural networks (ANNs). Each technique is applied to single, double, triple, quadruple, quintuple and sextuple sensor configurations. These configurations create 63 different combinations, and for six machine learning techniques, a total of 63 × 6 = 378 combinations is investigated. As a result, the waist region is found to be the most suitable location for sensor placement on the body with 99.96% fall detection sensitivity by using the k -NN classifier, whereas the best sensitivity achieved by the wrist sensor is 97.37%, despite this location being highly preferred for today’s wearable applications.
机译:用于跌倒检测的可穿戴设备已在学术界和工业界引起关注,因为跌倒非常危险,特别是对于老年人而言,如果不立即提供援助,则可能导致死亡。然而,某些预测装置不容易被老年人佩戴。在这项工作中,采用了包括2520个测试的庞大数据集来确定人体上最佳传感器放置位置,并减少用于设备人体工程学的传感器节点数量。在测试过程中,志愿者的运动记录有六组传感器,每组传感器均带有三轴(加速度计,陀螺仪和磁力计)传感器,传感器通过特殊的绑带紧紧地贴在身体的不同部位:头部,胸部,腰部,右腕,右大腿和右脚踝。使用六种机器学习技术研究各个传感器组及其位置的准确性,即k-近邻(k -NN)分类器,贝叶斯决策(BDM),支持向量机(SVM),最小二乘法(LSM) ,动态时间规整(DTW)和人工神经网络(ANN)。每种技术都适用于单,双,三,四,五和六元传感器配置。这些配置创建了63种不同的组合,对于六种机器学习技术,总共研究了63×6 = 378种组合。结果,通过使用k -NN分类器,发现腰部区域是人体上传感器放置的最合适位置,跌落检测灵敏度为99.96%,而手腕传感器达到的最佳灵敏度为97.37%,尽管如此在当今的可穿戴应用中,位置是首选。

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