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Feature Extraction and Discriminator Design for Landmine Detection on Double-Hump Signature in Ultrawideband SAR

机译:超宽带SAR双峰签名地雷检测特征提取与鉴别设计

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摘要

An air- or vehicleborne ultrawideband synthetic aperture radar (UWB SAR) has ground penetrating capability, which provides a sufficient approach to detect landmines over wide areas from a safe standoff distance. In this paper, a support vector machine (SVM) with hypersphere classification boundary, which is referred to as HyperSphere-SVM (HS-SVM), using a hidden Markov model (HMM) kernel on the feature vector extracted by a postfilter-based method is proposed for landmine detection. The postfilter-based method can extract the feature containing not only the amplitude but also the amplitude varying information of the double-hump signature of metallic and plastic landmines. Compared with simple kernels, e.g., the Gaussian kernel, the HMM kernel employs the state-transition information in the extracted feature into the discrimination procedure and, thus, can improve detection performance. The proposed postfilter-based feature extraction method and the HMM kernel HS-SVM are verified on the field data collected by a UWB SAR system in different scenarios.
机译:机载或车载的超宽带合成孔径雷达(UWB SAR)具有穿透地面的能力,这提供了一种从安全对峙距离检测大范围区域内地雷的充分方法。本文采用一种基于超球面分类边界的支持向量机(SVM),即基于隐式马尔可夫模型(HMM)内核的基于后置滤波器的方法提取的特征向量,称为HyperSphere-SVM(HS-SVM)。建议用于地雷探测。基于后滤波器的方法可以提取特征,该特征不仅包含金属地雷和塑料地雷的双峰特征的幅度而且还包含幅度变化信息。与例如高斯内核的简单内核相比,HMM内核将提取的特征中的状态转换信息用于判别过程,从而可以提高检测性能。基于UWB SAR系统在不同场景下采集的现场数据,验证了所提出的基于后滤波器的特征提取方法和HMM内核HS-SVM。

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