Departamento de Engenharia Electrotécnica e de Computadores, Faculdade de Ciências e Tecnologia (FCT), Universidade Nova de Lisboa, 2829-516 Caparica, Portugal.
Instituto de Telecomunicações, 1049-001 Lisbon, Portugal.
Sensors (Basel). 2023 Dec 1;23(23):9563. doi: 10.3390/s23239563.
This paper explores the opportunities and challenges for classifying human posture in indoor scenarios by analyzing the Frequency-Modulated (FM) radio broadcasting signal received at multiple locations. More specifically, we present a passive RF testbed operating in FM radio bands, which allows experimentation with innovative human posture classification techniques. After introducing the details of the proposed testbed, we describe a simple methodology to detect and classify human posture. The methodology includes a detailed study of feature engineering and the assumption of three traditional classification techniques. The implementation of the proposed methodology in software-defined radio devices allows an evaluation of the testbed's capability to classify human posture in real time. The evaluation results presented in this paper confirm that the accuracy of the classification can be approximately 90%, showing the effectiveness of the proposed testbed and its potential to support the development of future innovative classification techniques by only sensing FM bands in a passive mode.
本文通过分析在多个位置接收到的调频 (FM) 广播信号,探讨了在室内场景中对人体姿势进行分类的机会和挑战。更具体地说,我们提出了一个在 FM 无线电频段运行的被动射频测试平台,该平台允许对创新的人体姿势分类技术进行实验。在介绍了拟议测试平台的细节之后,我们描述了一种简单的方法来检测和分类人体姿势。该方法包括对特征工程的详细研究和对三种传统分类技术的假设。在软件定义无线电设备中实现所提出的方法可以评估测试平台实时分类人体姿势的能力。本文中提出的评估结果证实,分类的准确性约为 90%,这表明了所提出的测试平台的有效性及其在仅以被动模式感测 FM 频段的情况下支持未来创新分类技术发展的潜力。