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Ultrawideband Synthetic Aperture Radar Unexploded Ordnance Detection

机译:超宽带合成孔径雷达未爆弹药检测

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摘要

Airborne ultrawideband (UWB) synthetic aperture radar (SAR) can perform wide-area detection of unexploded ordnance (UXO) to locate former bombing ranges efficiently. Two main issues in UWB SAR UXO detection, feature extraction, and discriminator design are considered. A space-wavenumber distribution and moment invariants-based method is proposed to extract the multi-aspect feature of UXO with both amplitude and spatial distribution information. Based on the extracted feature, a support vector machine (SVM) with hypersphere classification boundary, referred to as HS-SVM, is used as the UXO discriminator, which can be trained with a small training set of only UXO samples. Furthermore, the problem of HS-SVM kernel choice is studied, and the hidden Markov model (HMM) kernel is proved to be better than the Gaussian kernel. The efficiency of the proposed feature extraction method and the HMM kernel HS-SVM is validated using real data collected by a UWB SAR system.
机译:机载超宽带(UWB)合成孔径雷达(SAR)可以对未爆炸弹药(UXO)进行大范围检测,从而有效地定位先前的轰炸范围。考虑了UWB SAR UXO检测中的两个主要问题,特征提取和鉴别器设计。提出了一种基于空间波数分布和矩不变性的方法,利用振幅和空间分布信息提取UXO的多方面特征。基于提取的特征,具有超球体分类边界的支持向量机(SVM)被称为HS-SVM,用作UXO鉴别器,可以通过仅UXO样本的少量训练集对其进行训练。此外,研究了HS-SVM内核选择问题,并证明了隐马尔可夫模型(HMM)内核优于高斯内核。使用UWB SAR系统收集的真实数据验证了所提出的特征提取方法和HMM内核HS-SVM的效率。

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