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Automatic vehicle classification in a low frequency forward scatter micro-radar.

机译:低频前向散射微雷达中的自动车辆分类。

摘要

Forward Scattering Radar (FSR) is a special case of bistatic radar configuration where the desired radar signal is formed via the shadowing of the direct (transmitter-to-receiver) signal by the target body. FSR offers a number of interests including an inherent ability to detect stealth target, absence of signal fluctuations, reasonably simple hardware, enhanced target radar cross-section (RCS) compared to traditional radar and capability to use Inverse Synthetic Aperture algorithms for Automatic Target Classification (ATC). Of course as any system FSR has its own drawbacks and limitations. ududThis thesis presents the research results on development of ATC algorithm under a variety of external factors such as clutter and target's trajectories uncertainties. The peculiarity of this research are that the FSR operates at a low (VHF and UHF) frequency bands that in a strict sense does not correspond to an optical region for vehicles like targets and the system operate with omnidirectional antennas. There is no previous research considered this practically important case. The algorithm is developed based on Fourier transform, Principal Component Analysis (PCA) and K-Nearest Neighbour (KNN) classifier - for features extraction, transformation and classification, respectively. The ATC system is integrated with coherent signal processing algorithm in order to estimate target’s motion parameters (i.e speed) prior to spectra normalisation process. The analytical and modelling results are experimentally confirmed. As ATC performance degraded when high level of clutter is present, cluttercompensated ATC model is introduced and its classification performance is analysed using measured signals with added simulated clutter.
机译:前向散射雷达(FSR)是双基地雷达配置的一种特殊情况,其中所需的雷达信号是通过目标主体对直接(发射器到接收器)信号的阴影形成的。 FSR具有许多优势,包括固有的检测隐形目标的能力,没有信号波动,相当简单的硬件,与传统雷达相比具有增强的目标雷达横截面(RCS)以及使用逆合成孔径算法进行自动目标分类的能力( ATC)。当然,就像任何系统一样,FSR也有其自身的缺点和局限性。 ud ud本文介绍了在各种外部因素(例如杂波和目标轨迹不确定性)下开发ATC算法的研究结果。这项研究的独特之处在于,FSR在低频带(VHF和UHF)上运行,严格来说,该频带与目标等车辆的光学区域不对应,并且系统使用全向天线运行。以前没有研究认为这种实际重要的情况。该算法是基于傅立叶变换,主成分分析(PCA)和K最近邻(KNN)分类器开发的,分别用于特征提取,变换和分类。 ATC系统与相干信号处理算法集成在一起,以便在频谱归一化处理之前估算目标的运动参数(即速度)。分析和建模结果通过实验得到证实。当存在高水平的杂波时,由于ATC性能下降,因此引入了杂波补偿的ATC模型,并使用添加了模拟杂波的测量信号来分析其分类性能。

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  • 年度 2012
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  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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