基于模型的金属探测器响应时空特征目标分类

D. Ambruš, D. Vasić, V. Bilas
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引用次数: 11

摘要

利用安装在移动机器人上的脉冲感应金属探测器的时空响应特性,提出了一种基于模型的地埋金属目标分类算法。在本文提出的方法中,我们首先推导了一个简化的解析模型,该模型对应于给定金属探测器的发射/接收线圈的几何形状。然后将传感头模型与金属目标解析偶极子模型耦合,该模型的参数为磁极化张量和目标位置。最后,将前向传感器/目标模型拟合到利用移动机器人对疑似目标区域进行空间映射得到的传感器数据中。在不同时间点(门)采集的传感器数据对应的反向磁极化张量用于目标表征和分类。该算法在包含替代地雷(金属球)和杂波目标的试验场收集的数据集上进行了实验评估。
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Model-based target classification using spatial and temporal features of metal detector response
The paper presents a novel model-based algorithm for classifying buried metallic targets using spatial and temporal response properties of a pulse induction metal detector mounted on a mobile robot for autonomous landmine detection. In the proposed approach, we firstly derive a simplified analytical model for spatial distribution of the primary magnetic field that corresponds to transmitter/receiver coil geometry of a given metal detector. The sensing head model is then coupled to a metallic target analytical dipole model whose parameters are the magnetic polarizability tensor and the target location. Finally, the forward sensor/target model is fitted to sensor data obtained by spatially mapping the suspected target area using a mobile robot. Inverted magnetic polarizability tensors corresponding to sensor data acquired at different time instances (gates) are used for target characterization and classification. The algorithm is experimentally evaluated on a dataset collected from a test site containing surrogate mines (metallic spheres) and clutter targets.
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