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Low data regimes in extreme climates: Foliage penetration personnel detection using a wireless network-based device-free sensing approach

机译:极端气候下的低数据制度:使用无线网络的无线设备的无线传感方法检测叶子渗透人员检测

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摘要

As far as low-cost deployment is concerned, wireless network-based device-free sensing (DFS) is of great interest and has successfully demonstrated the feasibility in Foliage penetration (FOPEN) target recognition. The classification accuracy of this technology is known to dramatically decrease in extreme climates where the received signals tend to be severely attenuated; while deep learning approaches have boosted performance, they only perform effectively when trained with large amounts of labeled data. Consequently, it is still unknown how to ensure reasonable detection accuracy in extreme climates where sufficient samples are difficult to obtain. To address this concern, we adopt two special measures for performance enhancement in this paper. One measure is to employ higher-order spectral (HOS) analysis to transform the time-domain signals into the bispectrum image representations, so that the shift to an image classification task could provide the advantage of using the existing Convolutional Neural Network (CNN) models. More importantly, the immunity of the approach against the unwanted clutters in foliage environments can be improved. The other one is to present an end-to-end Deep Learning Data Augmentation and Classification (DLDAC) model comprised of a Deep Convolutional Generative Adversarial Network (for data augmentation) and a SqueezeNet CNN backbone (for target classification), which can improve the classifier performance by using the augmented data on-the-fly. Thus, the negative impacts of low data regimes in extreme climates can be considerably accommodated. To evaluate the effectiveness of the proposed approach, comprehensive experiments are conducted on a real FOPEN dataset collected by impulse-radio ultra-wideband (IR-UWB) transceivers under three severe weather conditions. The experimental results demonstrate that even when only 300 training samples are taken for each type of target under every weather condition, the average classification accuracy of the proposed approach is still better than 92% in terms of distinguishing between human and other targets.
机译:就低成本部署而言,基于无线网络的无线设备无线传感(DFS)具有很大的兴趣,并且成功地证明了树叶渗透(Fopen)目标识别的可行性。已知该技术的分类准确性在极端气候下显着降低,其中所接收的信号趋于严重减弱;虽然深入学习方法具有提升性能,但它们仅在大量标记数据培训时才有效地执行。因此,仍然是如何在难以获得足够样品的极端气候下确保合理的检测精度。为解决这一问题,我们采取了两项绩效增强措施。一个度量是采用高阶光谱(HOS)分析来将时域信号转换为BISPectrum图像表示,使得转换到图像分类任务可以提供使用现有卷积神经网络(CNN)模型的优点。更重要的是,可以提高对叶面环境中的不需要的折叠器的方法的免疫力。另一个是介绍一个端到端的深度学习数据增强和分类(DLDAC)模型,包括深度卷积生成的对抗性网络(用于数据增强)和挤压Zenet CNN骨架(用于目标分类),其可以改善分类器性能通过在飞行中使用增强数据。因此,可以大大容纳低数据制度在极端气候中的负面影响。为了评估所提出的方法的有效性,在由脉冲 - 无线电超宽带(IR-UWB)收发器中由三个恶劣天气条件下的真实Fopen数据集进行综合实验。实验结果表明,即使在每种天气条件下只需要每种类型的靶标,所提出的方法的平均分类准确性也仍然优于92%,而是区分人和其他目标。

著录项

  • 来源
    《Ad hoc networks》 |2021年第4期|102438.1-102438.11|共11页
  • 作者单位

    School of Information and Electronics Beijing Institute of Technology Beijing 100081 China;

    School of Information and Electronics Beijing Institute of Technology Beijing 100081 China;

    School of Information and Electronics Beijing Institute of Technology Beijing 100081 China;

    School of Information and Electronics Beijing Institute of Technology Beijing 100081 China;

    Key Laboratory of Universal Wireless Communication Ministry of Education School of Information and Communication Engineering Beijing University of Posts and Telecommunications Beijing 100876 China;

    Global Big Data Technologies Centre (GBDTC) School of Electrical and Data Engineering University of Technology Sydney Sydney NSW 2007 Australia;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Data augmentation; Device-free sensing; Foliage penetration; Higher-order spectral; Impulse-radio ultra-wideband;

    机译:数据增强;无设备传感;叶片渗透;高阶光谱;脉冲无线电超宽带;
  • 入库时间 2022-08-19 01:59:01

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