Department of Industrial Engineering, Universidad Politécnica de Madrid, 28006 Madrid, Spain.
School of Mechanical Engineering and Automation, Beihang University (BUAA), Beijing 100083, China.
Sensors (Basel). 2018 Jul 3;18(7):2146. doi: 10.3390/s18072146.
According to the Industry 4.0 paradigm, all objects in a factory, including people, are equipped with communication capabilities and integrated into cyber-physical systems (CPS). Human activity recognition (HAR) based on wearable sensors provides a method to connect people to CPS. Deep learning has shown surpassing performance in HAR. Data preprocessing is an important part of deep learning projects and takes up a large part of the whole analytical pipeline. Data segmentation and data transformation are two critical steps of data preprocessing. This study analyzes the impact of segmentation methods on deep learning model performance, and compares four data transformation approaches. An experiment with HAR based on acceleration data from multiple wearable devices was conducted. The multichannel method, which treats the data for the three axes as three overlapped color channels, produced the best performance. The highest overall recognition accuracy achieved was 97.20% for eight daily activities, based on the data from seven wearable sensors, which outperformed most of the other machine learning techniques. Moreover, the multichannel approach was applied to three public datasets and produced satisfying results for multi-source acceleration data. The proposed method can help better analyze workers’ activities and help to integrate people into CPS.
根据工业 4.0 范式,工厂中的所有物体,包括人员,都配备了通信功能,并集成到了 cyber-physical 系统(CPS)中。基于可穿戴传感器的人体活动识别(HAR)为将人员连接到 CPS 提供了一种方法。深度学习在 HAR 方面表现出了卓越的性能。数据预处理是深度学习项目的重要组成部分,占据了整个分析管道的很大一部分。数据分割和数据转换是数据预处理的两个关键步骤。本研究分析了分割方法对深度学习模型性能的影响,并比较了四种数据转换方法。进行了基于来自多个可穿戴设备的加速数据的 HAR 实验。多通道方法将三个轴的数据视为三个重叠的颜色通道,产生了最佳的性能。基于来自七个可穿戴传感器的数据,针对八项日常活动实现了最高的整体识别准确率为 97.20%,优于大多数其他机器学习技术。此外,该多通道方法还应用于三个公共数据集,并为多源加速数据产生了令人满意的结果。所提出的方法可以帮助更好地分析工人的活动,并有助于将人员集成到 CPS 中。