School of Instrument Science and Engineering, Southeast University, Nanjing 210096, China.
Sensors (Basel). 2023 Feb 26;23(5):2593. doi: 10.3390/s23052593.
Physical activity recognition is a field that infers human activities used in machine learning techniques through wearable devices and embedded inertial sensors of smartphones. It has gained much research significance and promising prospects in the fields of medical rehabilitation and fitness management. Generally, datasets with different wearable sensors and activity labels are used to train machine learning models, and most research has achieved satisfactory performance for these datasets. However, most of the methods are incapable of recognizing the complex physical activity of free living. To address the issue, we propose a cascade classifier structure for sensor-based physical activity recognition from a multi-dimensional perspective, with two types of labels that work together to represent an exact type of activity. This approach employed the cascade classifier structure based on a multi-label system (Cascade Classifier on Multi-label, CCM). The labels reflecting the activity intensity would be classified first. Then, the data flow is divided into the corresponding activity type classifier according to the output of the pre-layer prediction. The dataset of 110 participants has been collected for the experiment on PA recognition. Compared with the typical machine learning algorithms of Random Forest (RF), Sequential Minimal Optimization (SMO) and K Nearest Neighbors (KNN), the proposed method greatly improves the overall recognition accuracy of ten physical activities. The results show that the RF-CCM classifier has achieved 93.94% higher accuracy than the 87.93% obtained from the non-CCM system, which could obtain better generalization performance. The comparison results reveal that the novel CCM system proposed is more effective and stable in physical activity recognition than the conventional classification methods.
体力活动识别是通过可穿戴设备和智能手机嵌入式惯性传感器推断人类活动的领域,它在医疗康复和健身管理领域具有重要的研究意义和广阔的应用前景。通常,使用具有不同可穿戴传感器和活动标签的数据集来训练机器学习模型,并且大多数研究针对这些数据集取得了令人满意的性能。然而,大多数方法无法识别自由生活中的复杂体力活动。为了解决这个问题,我们提出了一种基于传感器的体力活动识别的级联分类器结构,该结构从多维角度考虑,使用两种标签共同表示一种确切的活动类型。该方法采用基于多标签系统(多标签级联分类器,CCM)的级联分类器结构。首先对反映活动强度的标签进行分类。然后,根据前一层预测的输出,将数据流划分为相应的活动类型分类器。针对 PA 识别实验收集了 110 名参与者的数据集。与随机森林(RF)、序贯最小优化(SMO)和 K 近邻(KNN)等典型机器学习算法相比,所提出的方法大大提高了十种体力活动的整体识别准确率。结果表明,RF-CCM 分类器的准确率比非 CCM 系统的 87.93%高出 93.94%,能够获得更好的泛化性能。对比结果表明,所提出的新型 CCM 系统在体力活动识别方面比传统分类方法更有效和稳定。