首页> 外文会议>Conference on detection and sensing of mines, explosive objects, and obscured targets XIV; 20090413-17; Orlando, FL(US) >Realtime Gaussian Markov Random Field Based Ground Tracking for Ground Penetrating Radar Data
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Realtime Gaussian Markov Random Field Based Ground Tracking for Ground Penetrating Radar Data

机译:基于实时高斯马尔可夫随机场的探地雷达数据地面跟踪

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Current ground penetrating radar algorithms for landmine detection require accurate estimates of the location of the air/ground interface to maintain high levels of performance. However, the presence of surface clutter, natural soil roughness, and antenna motion lead to uncertainty in these estimates. Previous work on improving estimates of the location of the air/ground interface have focused on one-dimensional filtering techniques to localize the air/ground interface. In this work, we propose an algorithm for interface localization using a 2-D Gaussian Markov random field (GMRF). The GMRF provides a statistical model of the surface structure, which enables the application of statistical optimization techniques. In this work, the ground location is inferred using iterated conditional modes (ICM) optimization which maximizes the conditional pseudo-likelihood of the GMRF at a point, conditioned on its neighbors. To illustrate the efficacy of the proposed interface localization approach, pre-screener performance with and without the proposed ground localization algorithm is compared. We show that accurate localization of the air/ground interface provides the potential for future performance improvements.
机译:当前用于探雷的探地雷达算法需要对空/地界面的位置进行准确估计,以保持高水平的性能。但是,表面杂波,自然土壤粗糙度和天线运动的存在导致这些估计的不确定性。先前关于改善空中/地面接口位置的估计的工作集中于一维滤波技术以定位空中/地面接口。在这项工作中,我们提出了一种使用二维高斯马尔可夫随机场(GMRF)进行接口定位的算法。 GMRF提供了表面结构的统计模型,从而可以应用统计优化技术。在这项工作中,使用迭代条件模式(ICM)优化来推断地面位置,该条件优化模式将GMRF的条件伪似然性最大化(以其邻居为条件)。为了说明所提出的接口定位方法的有效性,比较了有和没有提出的地面定位算法时的预筛选器性能。我们表明,空中/地面接口的准确定位为将来的性能改进提供了潜力。

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