Context Awareness with Ambient FM Signal Using Multi-Domain Features

Jie Wang, Xueyan Feng, Qinghua Gao, Hao Yue, Yuguang Fang
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引用次数: 1

Abstract

Context awareness plays an important role in many emerging applications, such as mobile computing and smart space. Since FM signal is ubiquitous, it has been recognized as an attractive and promising technique to realize context awareness. When a target is at different locations or performs different activities, it will exert different influence on the FM signal around it. Therefore, it is possible to deduce its location and activity by analysing its influence on the FM signal. However, FM signal is extremely weak and noisy, which makes it a challenging task to achieve high-performance context awareness. In this paper, we propose a new method for improving the performance of an FM-based context-aware system using multi-domain features. Specifically, we extract signal features not only from the time domain, but also from the wavelet domain, the frequency domain, and the space domain, and construct robust and discriminative multi-domain features to characterize the FM signal. Furthermore, we also model context awareness as a classification problem and develop a robust iterative sparse representation classification algorithm to efficiently solve this problem. Extensive experiments performed in a 7.2m×10.8m clutter indoor laboratory with one multi- channel FM receiver demonstrate that the proposed schemes could achieve more than 90% accuracy of location estimation and activity recognition when 3 antennas are used.
利用多域特征与环境调频信号进行上下文感知
上下文感知在许多新兴应用中发挥着重要作用,例如移动计算和智能空间。由于调频信号无处不在,调频信号被认为是实现上下文感知的一种有吸引力和前景的技术。当目标在不同的位置或进行不同的活动时,会对其周围的调频信号产生不同的影响。因此,可以通过分析其对调频信号的影响来推断其位置和活动。然而,调频信号非常微弱且有噪声,这使得实现高性能的上下文感知成为一项具有挑战性的任务。在本文中,我们提出了一种利用多域特征来提高基于fm的上下文感知系统性能的新方法。具体而言,我们不仅从时域提取信号特征,而且从小波域、频域和空间域提取信号特征,并构建鲁棒性和判别性强的多域特征来表征调频信号。此外,我们还将上下文感知建模为分类问题,并开发了一种鲁棒迭代稀疏表示分类算法来有效地解决这一问题。在一个7.2m×10.8m杂波室内实验室进行的多通道调频接收机实验表明,当使用3根天线时,所提方案的位置估计和活动识别精度达到90%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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