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Sparse Model Representations of Target Signatures for Improved Landmine Detection Using Frequency-Domain Electromagnetic Induction Sensors

机译:使用频域电磁感应传感器改进地雷探测的目标特征的稀疏模型表示

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Frequency-domain electromagnetic induction (EMI) sensors have the ability to measure target signatures which enable discrimination of landmines from harmless clutter. In a model-based signal processing paradigm, the target signatures can be decomposed into a weighted sum of parameterized basis functions, where the basis functions are intrinsic to the target under consideration and the associated weights are a function of the target sensor orientation. The basis function parameters can then be used as features for classification of the target as landmine or clutter. One of the challenges associated with effectively utilizing frequency-domain EMI sensor data within a model-based signal processing paradigm such as this is determining the correct model order for the measured data, as the number of basis functions intrinsic to the target under consideration is not known a priori. In this work, relevance vector machine (RVM) regression is applied to simultaneously determine both the number of parameterized basis functions and their relative contributions to the measured signal. The target may then be classified utilizing the basis function parameters as features within a statistical classifier. Results for data measured with a prototype frequency-domain EMI sensor at a standardized test site are presented. Preliminary results indicate that RVM regression followed by statistical classification utilizing the resulting model-based features provides an effective approach for classifying targets as landmine or clutter.
机译:频域电磁感应(EMI)传感器具有测量目标特征的能力,可以区分无害的地雷。在基于模型的信号处理范例中,可以将目标签名分解为参数化基础函数的加权和,其中基础函数对于所考虑的目标是固有的,而相关权重是目标传感器方向的函数。然后,基本功能参数可以用作将目标分类为地雷或混乱物的特征。在诸如此类的基于模型的信号处理范例中,如何有效利用频域EMI传感器数据相关的挑战之一是为测量数据确定正确的模型顺序,因为考虑中的目标所固有的基本功能数量并不多先验的。在这项工作中,应用了相关向量机(RVM)回归来同时确定参数化基函数的数量及其对测量信号的相对贡献。然后可以利用基本函数参数作为统计分类器内的特征对目标进行分类。给出了在标准测试现场使用原型频域EMI传感器测量的数据结果。初步结果表明,RVM回归,然后利用所得的基于模型的特征进行统计分类,为将目标分类为地雷或混乱提供了有效的方法。

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