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Applying a volume dipole distribution model to next-generation sensor data for multi-object data inversion and discrimination

机译:将体积偶极子分布模型应用于下一代传感器数据以进行多对象数据反演和判别

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Discrimination between UXO and harmless objects is particularly difficult in highly contaminated sites where two or more objects are simultaneously present in the field of view of the sensor and produce overlapping signals. The first step in overcoming this problem is estimating the number of targets. In this work an orthonormalized volume magnetic source (ONVMS) approach is introduced for estimating the number of targets, along with their locations and orientations. The technique is based on the discrete dipole approximation, which distributes dipoles inside the computational volume. First, a set of orthogonal functions are constructed using fundamental solutions of the Helmholtz equations (i.e., Green's functions). Then, the scattered magnetic field is approximated as a series of these orthogonal functions. The magnitudes of the expansion coefficients are determined directly from the measurement data without solving an ill-posed inverse-scattering problem. The expansion coefficients are then used to determine the amplitudes of the responding volume magnetic dipoles. The algorithm's superior performance and applicability to live UXO sites are illustrated by applying it to the bi-static TEMTADS multi-target data sets collected by NRL personnel at the Aberdeen Proving Ground UXO test-stand site.
机译:UXO和无害物体之间的区别在高度污染的地点尤其困难,在该高度污染的地点,在传感器的视野中同时存在两个或多个物体并产生重叠信号。解决此问题的第一步是估算目标数量。在这项工作中,引入了正交归一化体积磁源(ONVMS)方法来估计目标的数量及其位置和方向。该技术基于离散偶极近似,该离散偶极近似将偶极分布在计算量内。首先,使用亥姆霍兹方程的基本解(即格林函数)构造一组正交函数。然后,将散射磁场近似为一系列这些正交函数。膨胀系数的大小直接从测量数据确定,而无需解决不适当地的逆散射问题。然后,将膨胀系数用于确定响应的体积磁偶极子的振幅。通过将算法应用于Nber人员在阿伯丁试验场UXO测试台站点收集的双静态TEMTADS多目标数据集,说明了该算法在现场UXO站点上的优越性能和适用性。

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