Fast and Precise Neural Network-Based Environment Detection utilizing UWB CSI for Seamless Localization Applications

G. Kia, D. Plets, Ben Van Herbruggen, Jaron Fontaine, L. Verloock, E. D. Poorter, J. Talvitie
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Abstract

Seamless localization, navigation, and tracking applications can be realized utilizing different sensors and cameras, radio frequency signals such as WiFi, ultra-wideband, and global navigation satellite system, each of which is better suited for different types of environments. As such, awareness of the environment is crucial for the system to efficiently utilize the most relevant resources in each scenario and enable seamless transition between different environments. For example, when vehicles are moving from an open area such as open highway to crowded urban streets, or the opposite, they experience a considerable environment transition, which triggers opportunities for wide-range environment-specific device and algorithm optimization. In this paper, a novel infrastructure-free method utilizing channel state information of ultra-wideband signals and a convolutional neural network is proposed. This method enables a fast detection of the environment type, including crowded urban and open outdoor, reaching a detection latency of only three milliseconds. The experimental data is collected in the real environments of the city of Ghent, Belgium. The test data set, used for numerical performance evaluations, is collected from areas different from those used in the training set. The results show that the proposed method provides an average environment detection accuracy of 90% in the considered test setup.
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基于超宽带CSI的快速精确神经网络环境检测用于无缝定位应用
无缝定位、导航和跟踪应用可以利用不同的传感器和摄像头,无线射频信号,如WiFi、超宽带和全球导航卫星系统,每一个都更适合不同类型的环境。因此,环境意识对于系统在每个场景中有效利用最相关的资源并实现不同环境之间的无缝转换至关重要。例如,当车辆从开放的高速公路等开放区域移动到拥挤的城市街道或相反的地方时,它们会经历相当大的环境转换,这就为大范围的环境专用设备和算法优化提供了机会。本文提出了一种利用超宽带信号的信道状态信息和卷积神经网络的无基础结构方法。该方法能够快速检测环境类型,包括拥挤的城市和开放的室外,检测延迟仅为3毫秒。实验数据是在比利时根特市的真实环境中收集的。用于数值性能评估的测试数据集是从不同于训练集的区域收集的。结果表明,在考虑的测试设置中,该方法的平均环境检测精度为90%。
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