School of Mathematical Sciences and LMAM, Peking University, Beijing 100871, China.
Sensors (Basel). 2023 Oct 10;23(20):8373. doi: 10.3390/s23208373.
Sensor-based human activity recognition aims to classify human activities or behaviors according to the data from wearable or embedded sensors, leading to a new direction in the field of Artificial Intelligence. When the activities become high-level and sophisticated, such as in the multiple technical skills of playing badminton, it is usually a challenging task due to the difficulty of feature extraction from the sensor data. As a kind of end-to-end approach, deep neural networks have the capacity of automatic feature learning and extracting. However, most current studies on sensor-based badminton activity recognition adopt CNN-based architectures, which lack the ability of capturing temporal information and global signal comprehension. To overcome these shortcomings, we propose a deep learning framework which combines the convolutional layers, LSTM structure, and self-attention mechanism together. Specifically, this framework can automatically extract the local features of the sensor signals in time domain, take the LSTM structure for processing the badminton activity data, and focus attention on the information that is essential to the badminton activity recognition task. It is demonstrated by the experimental results on an actual badminton single sensor dataset that our proposed framework has obtained a badminton activity recognition (37 classes) accuracy of 97.83%, which outperforms the existing methods, and also has the advantages of lower training time and faster convergence.
基于传感器的人体活动识别旨在根据可穿戴或嵌入式传感器的数据对人体活动或行为进行分类,这为人工智能领域开辟了一个新的方向。当活动变得高级和复杂时,例如在打羽毛球的多种技术技能中,由于从传感器数据中提取特征的难度,通常是一项具有挑战性的任务。作为一种端到端的方法,深度神经网络具有自动特征学习和提取的能力。然而,目前基于传感器的羽毛球活动识别的大多数研究都采用基于 CNN 的架构,这些架构缺乏捕获时间信息和全局信号理解的能力。为了克服这些缺点,我们提出了一个将卷积层、LSTM 结构和自注意力机制结合在一起的深度学习框架。具体来说,该框架可以自动提取传感器信号的时域局部特征,采用 LSTM 结构处理羽毛球活动数据,并关注对羽毛球活动识别任务至关重要的信息。在实际的羽毛球单传感器数据集上的实验结果表明,我们提出的框架在羽毛球活动识别(37 类)方面的准确率达到 97.83%,优于现有方法,并且还具有训练时间更短、收敛速度更快的优点。