Department of Smart Wearables Engineering, Soongsil University, Seoul 06978, Republic of Korea.
Department of Material Science and Engineering, Soongsil University, Seoul 06978, Republic of Korea.
Sensors (Basel). 2023 Jun 20;23(12):5736. doi: 10.3390/s23125736.
Research on healthcare and body monitoring has increased in recent years, with respiratory data being one of the most important factors. Respiratory measurements can help prevent diseases and recognize movements. Therefore, in this study, we measured respiratory data using a capacitance-based sensor garment with conductive electrodes. To determine the most stable measurement frequency, we conducted experiments using a porous Eco-flex and selected 45 kHz as the most stable frequency. Next, we trained a 1D convolutional neural network (CNN) model, which is a type of deep learning model, to classify the respiratory data according to four movements (standing, walking, fast walking, and running) using one input. The final test accuracy for classification was >95%. Therefore, the sensor garment developed in this study can measure respiratory data for four movements and classify them using deep learning, making it a versatile wearable in the form of a textile. We expect that this method will advance in various healthcare fields.
近年来,医疗保健和身体监测方面的研究有所增加,其中呼吸数据是最重要的因素之一。呼吸测量有助于预防疾病和识别运动。因此,在这项研究中,我们使用带有导电电极的基于电容的传感器服装来测量呼吸数据。为了确定最稳定的测量频率,我们使用多孔 Eco-flex 进行了实验,并选择 45 kHz 作为最稳定的频率。接下来,我们训练了一个一维卷积神经网络(CNN)模型,这是一种深度学习模型,使用一个输入根据四个动作(站立、行走、快走和跑步)对呼吸数据进行分类。分类的最终测试准确率>95%。因此,本研究中开发的传感器服装可以使用深度学习测量四种运动的呼吸数据并对其进行分类,这使其成为一种多功能的纺织品形式的可穿戴设备。我们期望这种方法将在各种医疗保健领域得到进一步发展。