Department of Physics, Politecnico di Milano, 20133 Milan, Italy.
Department of Electronics, Information and Bioengineering, Politecnico di Milano, 20133 Milano, Italy.
Sensors (Basel). 2021 Nov 15;21(22):7580. doi: 10.3390/s21227580.
Recognizing Activities of Daily Living (ADL) or detecting falls in domestic environments require monitoring the movements and positions of a person. Several approaches use wearable devices or cameras, especially for fall detection, but they are considered intrusive by many users. To support such activities in an unobtrusive way, ambient-based solutions are available (e.g., based on PIRs, contact sensors, etc.). In this paper, we focus on the problem of sitting detection exploiting only unobtrusive sensors. In fact, sitting detection can be useful to understand the position of the user in many activities of the daily routines. While identifying sitting/lying on a sofa or bed is reasonably simple with pressure sensors, detecting whether a person is sitting on a chair is an open problem due to the natural chair position volatility. This paper proposes a reliable, not invasive and energetically sustainable system that can be used on chairs already present in the home. In particular, the proposed solution fuses the data of an accelerometer and a capacitive coupling sensor to understand if a person is sitting or not, discriminating the case of objects left on the chair. The results obtained in a real environment setting show an accuracy of 98.6% and a precision of 95%.
日常生活活动(ADL)的识别或在家庭环境中检测跌倒需要监测人的运动和位置。有几种方法使用可穿戴设备或摄像机,特别是用于跌倒检测,但许多用户认为它们具有侵入性。为了以不引人注目的方式支持此类活动,提供了基于环境的解决方案(例如,基于 PIR、接触传感器等)。在本文中,我们专注于仅利用不引人注目的传感器进行坐姿检测的问题。实际上,坐姿检测对于理解用户在日常生活中的许多活动中的位置非常有用。虽然使用压力传感器可以合理地简单识别坐在沙发或床上,但由于椅子位置的自然波动性,检测一个人是否坐在椅子上是一个开放的问题。本文提出了一种可靠、非侵入性且节能可持续的系统,可用于家庭中已有的椅子上。特别是,所提出的解决方案融合了加速度计和电容耦合传感器的数据,以了解人是否坐着,并区分椅子上遗留物品的情况。在真实环境设置中获得的结果显示出 98.6%的准确率和 95%的精度。