Multi-scaled power spectrum based features for landmine detection using Ground Penetrating Radar

B. Rohman, M. Nishimoto
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引用次数: 2

Abstract

Landmines are a humanitarian challenge because they do not discriminate between soldiers and civilians. One potential method for detecting unexploded landmines in post-conflict zones is the use of ground penetrating radar (GPR). However, detecting shallowly-buried landmines under a variety of soil and surface conditions is a challenging task in terms of signal processing. The present paper proposes a new approach based on multi-scale power spectrum features. The power spectrum of GPR response is processed using multi-scale triangular filter banks in order to produce a set of feature coefficients, which are then ranked by their significance with respect to the classification using the feature selection algorithm ReliefF. Using these ranked features, a support vector machine based classifier is used to evaluate the feasibility of landmine detection using this approach. The soil conditions considered are homogeneous (dry), homogeneous (moist) and heterogeneous, with different surface roughnesses. The results indicate that the proposed method can successfully detect landmines in a variety of environments using a relatively small number of spectral features. In addition, the GPR frequency bands that are most effective for landmine detection tasks are identified.
基于多尺度功率谱特征的探地雷达地雷探测
地雷是一项人道主义挑战,因为它们不分士兵和平民。在冲突后地区探测未爆炸地雷的一种潜在方法是使用探地雷达。然而,在各种土壤和地表条件下探测浅埋地雷在信号处理方面是一项具有挑战性的任务。本文提出了一种基于多尺度功率谱特征的新方法。利用多尺度三角形滤波器组对探地雷达响应的功率谱进行处理,得到一组特征系数,然后利用特征选择算法ReliefF对特征系数进行显著性排序。利用这些排序特征,使用基于支持向量机的分类器来评估使用该方法进行地雷探测的可行性。考虑的土壤条件是均匀的(干燥),均匀的(潮湿)和非均匀的,具有不同的表面粗糙度。结果表明,该方法可以利用相对较少的光谱特征在多种环境下成功地探测到地雷。此外,还确定了对地雷探测任务最有效的探地雷达频带。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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