首页> 外文期刊>Applied Sciences >Clutter Elimination and Harmonic Suppression of Non-Stationary Life Signs for Long-Range and Through-Wall Human Subject Detection Using Spectral Kurtosis Analysis (SKA)-Based Windowed Fourier Transform (WFT) Method
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Clutter Elimination and Harmonic Suppression of Non-Stationary Life Signs for Long-Range and Through-Wall Human Subject Detection Using Spectral Kurtosis Analysis (SKA)-Based Windowed Fourier Transform (WFT) Method

机译:基于光谱峰度分析(SKA)的开窗傅立叶变换(WFT)方法的远程和穿墙人体检测的非平稳生命体征的杂波消除和谐波抑制

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Life sign detection is important in many applications, such as locating disaster victims. This can be difficult in low signal to noise ratio (SNR) and through-wall conditions. This paper considers life sign detection using an impulse ultra-wideband (UWB) bio-radar with an improved sensing algorithm for clutter elimination, harmonic suppression and random-noise de-noising. To improve detection performance, two filters are used to improve SNR of these life signs. The automatic gain method is performed in fast time to improve the respiration signals. The spectral kurtosis analysis (SKA)-based windowed Fourier transform (WFT) method and an accumulator in the frequency domain are used to provide two distance estimates between the radar and human subject. Further, the accumulator can also provide the frequency estimate of the respiration signals. These estimates are used to determine if a human is present in the detection environment. Results are presented which show that the range and respiration frequency can be estimated accurately in low signal to noise and clutter ratio (SNCR) environments. In addition, the performance is better than with other techniques given in the literature.
机译:生命体征检测在许多应用中都很重要,例如定位灾难受害者。在低信噪比(SNR)和穿墙条件下,这可能很困难。本文考虑使用脉冲超宽带(UWB)生物雷达进行生命信号检测,并采用改进的感测算法来消除杂波,抑制谐波和消除随机噪声。为了提高检测性能,使用了两个滤波器来改善这些生命体征的SNR。快速执行自动增益方法以改善呼吸信号。基于光谱峰度分析(SKA)的加窗傅立叶变换(WFT)方法和频域中的累加器用于提供雷达与人类对象之间的两个距离估计。此外,累加器还可以提供呼吸信号的频率估计。这些估计值用于确定检测环境中是否有人。结果表明,在低信噪比和杂波比(SNCR)环境中,可以准确估算距离和呼吸频率。此外,性能优于文献中给出的其他技术。

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