Human Activity Recognition (HAR) using wearable devices such as smart watches embedded with Inertial Measurement Unit (IMU) sensors has various applications relevant to our daily life, such as workout tracking and health monitoring. In this paper, we propose a novel attention-based approach to human activity recognition using multiple IMU sensors worn at different body locations. Firstly, a sensor-wise feature extraction module is designed to extract the most discriminative features from individual sensors with Convolutional Neural Networks (CNNs). Secondly, an attention-based fusion mechanism is developed to learn the importance of sensors at different body locations and to generate an attentive feature representation. Finally, an inter-sensor feature extraction module is applied to learn the inter-sensor correlations, which are connected to a classifier to output the predicted classes of activities. The proposed approach is evaluated using five public datasets and it outperforms state-of-the-art methods on a wide variety of activity categories.
翻译:人类活动识别(HAR)使用隐蔽的惯性测量仪传感器嵌入的智能手表等可磨损装置,使用智能手表等与我们日常生活有关的各种应用,如锻炼跟踪和健康监测。在本文件中,我们建议对人体活动识别采取新的关注方式,使用在不同身体地点穿戴的多个IMU传感器。首先,传感器特征提取模块的设计是为了从与革命神经网络(CNNs)的单个传感器中提取最有区别的特征。第二,开发了基于关注的聚合机制,以了解传感器在不同身体地点的重要性,并生成一个专注的特征描述。最后,使用了传感器特征提取模块来学习传感器之间的相关性,该模块与分类器连接,输出预测的活动类别。拟议方法使用5个公共数据集进行评估,在多种活动类别上优于最先进的方法。