Fall-detection on a wearable micro controller using machine learning algorithms

Lena Oden, Thorsten Witt
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引用次数: 4

Abstract

Wearables providing fall detection can provide faster emergency services for elderly, yet privacy concerns limit acceptance of this technology. In this work, we evaluate a machine learning algorithm, called Bosnai, for embedded edge devices to detect falls. The prototype is Arduino based and can be integrated into fabrics for clothes, belts, or other accessories. The fall detection is performed offline on the device. We used data from public datasets of movement and fall events to train a tree-based machine learning model. We evaluated different combinations of prepossessed parameters as input features for the learning algorithm. The learned model is transferred to the microcontroller and can classify the sensor data offline but in real-time. We evaluate the performance of our device by performing intensive test runs with the prototype. The microcontroller is extremely limited in terms of memory capacity and computing performance, which only allows a limited number of features for learning. For this reason, it is especially important to preprocess the raw accelerator data and select the right features for training and inference. Our results show that the best performance (approx. 94.2 % accuracy) is achieved when we choose absolute acceleration and variance as features, with a sampling rate of 20 Hz and a recording window of 3s, as this system is the most robust against external interference.
使用机器学习算法的可穿戴微控制器上的跌倒检测
提供跌倒检测功能的可穿戴设备可以为老年人提供更快的紧急服务,但隐私问题限制了这项技术的接受程度。在这项工作中,我们评估了一种名为Bosnai的机器学习算法,用于嵌入式边缘设备检测跌倒。原型机基于Arduino,可以集成到衣服、皮带或其他配件的织物中。跌落检测在设备上离线执行。我们使用来自运动和跌倒事件的公共数据集的数据来训练基于树的机器学习模型。我们评估了预占有参数的不同组合作为学习算法的输入特征。将学习到的模型传输到单片机中,可以离线但实时地对传感器数据进行分类。我们通过对原型进行密集的测试来评估我们的设备的性能。微控制器在内存容量和计算性能方面非常有限,这只允许有限数量的特征用于学习。因此,对原始加速器数据进行预处理并选择正确的特征进行训练和推理就显得尤为重要。我们的结果表明,最佳性能(约为。当我们选择绝对加速度和方差作为特征,采样率为20 Hz,记录窗口为3秒时,该系统对外部干扰的鲁棒性最强,达到94.2%的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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