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A wearable real-time fall detector based on Naive Bayes classifier

机译:基于天真贝叶斯分类器的可穿戴实时秋季探测器

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In this paper, we implement a wearable real-time system using the Sun SPOT wireless sensors embedded with Naive Bayes algorithm to detect fall. Naive Bayes algorithm is demonstrated to be better than other algorithms both in accuracy performance and model building time in this particular application. At 20Hz sampling rate, two Sun SPOT sensors attached to the chest and the thigh provide acceleration information to detect forward, backward, leftward and rightward falls with 100% accuracy as well as overall 87.5% sensitivity.
机译:在本文中,我们使用嵌入了Naive Bayes算法的太阳点无线传感器来实现可穿戴的实时系统来检测跌倒。朴素的贝叶斯算法被证明在该特定应用中的准确性性能和模型构建时间中的其他算法优于其他算法。在20Hz采样率下,两个太阳点传感器连接到胸部和大腿提供加速信息,以检测向前,向左,向右,向右和向右均以100%的精度和总体的灵敏度为87.5%。

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