基于自回归模型的探地雷达数据威胁检测

Selim Sahin, Çagri Demir, I. Erer
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引用次数: 0

摘要

在本文中,我们考察了两种地雷探测算法[2,3],提出了修改建议,并介绍了使用自动回归(AR)建模算法检测杀伤人员地雷(AP)的结果。第一种方法是基于AR模型的参考数据与模拟数据之间的统计距离。在文献中,统计距离只计算A-Scan数据,而在本研究中,我们建议同时计算A-Scan和处理数据的行。第二种方法是基于b扫描杂波能量的AR建模。为了判断是否存在威胁特征,提出利用估计的AR模型杂波能量与真实数据能量之间的差值。结果表明,本文提出的基于AR模型的算法可用于探地雷达数据中的威胁检测,并给出了提高检测性能的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Threat Detection In GPR Data Using Autoregressive Modelling
In this paper we inspect two mine detection algorithms [2,3], suggest modifications and present results on detection of anti-personnel (AP) landmines using methods employing Auto Regressive (AR) modeling algortihms. First method is based on the statistical distance between AR models of the reference and simulated data. In literature, while the statistical distance is calculated only for A-Scan data, in this study we suggest statistical distance to be calculated for both A-Scan and rows of the processed data. The second method is relied on AR modeling of the clutter energy in the B-scan. To decide whether a threat signature is present, it is proposed to utilize the difference between the estimated AR model clutter energy and the energy of real data. It is shown that proposed AR model based algorithms can be utilized to detect threat in GPR data and some advices to improve detection performance are given.
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