Blandine Pichon, Eric Benoit, Stéphane Perrin, Alexandre Benoit, Nicolas Berton, Dorian Coves, Julien Cruvieux, Youssouph Faye
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引用次数: 1
摘要
对老年人的步态进行连续的内部测量对保健专业人员来说非常重要。要想被大多数人采用,该系统必须成本低、无干扰。在本文中,我们提出了一种基于 4 个电动势传感器网络的步行速度测量解决方案。在实验中,我们还加入了之前工作中使用的 PIR 传感器,以进行比较。临时深度摄像头用于训练行走速度模型。最初的结果是在没有机器学习的情况下获得的。然后测试了一种机器学习回归方法,以减少传感器的不确定性。结果表明,电动势传感器适用于内部测量老年人的行走速度。其不确定性低于 0.15 米/秒-1 的目标值,而 0.15 米/秒-1 是检测因疾病导致速度下降的上限。与 PIR 传感器相比,电动势传感器能耗低,价格便宜,可以嵌入和隐藏在家中,因此干扰性更小,而且精度更高。
A low-cost machine learning process for gait measurement using an electrostatic sensors network
Continuous in-house measurement of gait of elderly People is relevant for health professionals. To be adopted by most, the system must be low-cost and non-intrusive. In this paper we present a solution for measuring the walking velocity based on a network of 4 electric potential sensors. In our experiments, we also add PIR sensors used in our previous work for comparative purposes. A temporary Depth camera is used for training the model on walking velocity. The first results presented are obtained without machine learning. Then a machine learning regression method is tested to reduce the uncertainty of the sensors. The results show that the electric potential sensors are suitable for the in-house measurement of walking speed of elderly people. The uncertainty is lower than the target of 0.15 m s-1 known as the upper limit for detecting a reduction in speed due to illness. As for the PIR sensors, electric potential sensors consume very little energy, they are inexpensive, they can be embedded and hidden in the home which makes them less -intrusive and furthermore have better accuracy.
期刊介绍:
The main goal of this journal is the enhancement of academic activities of IMEKO and a wider dissemination of scientific output from IMEKO TC events. High-quality papers presented at IMEKO conferences, workshops or congresses are seleted by the event organizers and the authors are invited to publish an enhanced version of their paper in this journal. The journal also publishes scientific articles on measurement and instrumentation not related to an IMEKO event.