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Accelerometer-based fall detection using feature extraction and support vector machine algorithms

机译:使用特征提取和支持向量机算法的基于加速度计的跌倒检测

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摘要

Falls by the elderly may result in hip fractures, paraplegia, and even death. Hence, over the past few decades, considerable research has been conducted on fall detection. Here, an accelerometer-based fall detector is reported that is fastened to a person's waist and includes an accelerometer, a multiplexer, a fifth-order low-pass Butterworth filter, and a microcontroller. Acceleration sensing, noise filtering, and analog-to-digital conversion were performed by the circuitry. The processed signal was sent to a personal computer through Bluetooth and analyzed by customized software. The fall detection algorithm included feature extraction and a support vector machine algorithm for classifying the features. Twenty volunteers performed 12 trials of 6 daily activities and 6 fall events. The results show that the algorithm had high sensitivity (95%) and specificity (96.7%). Thus, this device is expected to have significant application for fall detection.
机译:老人跌倒可能导致髋部骨折,截瘫,甚至死亡。因此,在过去的几十年中,已经对跌倒检测进行了大量研究。在此,报道了一种基于加速度计的跌倒检测器,该检测器固定在人的腰部,包括加速度计,多路复用器,五阶低通巴特沃思滤波器和微控制器。电路执行加速感应,噪声滤波和模数转换。处理后的信号通过蓝牙发送到个人计算机,并通过定制软件进行分析。跌倒检测算法包括特征提取和用于对特征进行分类的支持向量机算法。二十名志愿者进行了12次试验,共进行6次日常活动和6次秋季活动。结果表明,该算法具有较高的灵敏度(95%)和特异性(96.7%)。因此,期望该装置在跌倒检测中具有重要的应用。

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