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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Adaptive Ground Clutter Reduction in Ground-Penetrating Radar Data Based on Principal Component Analysis
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Adaptive Ground Clutter Reduction in Ground-Penetrating Radar Data Based on Principal Component Analysis

机译:基于主成分分析的地面穿透雷达数据的自适应地面杂波降低

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摘要

Singular value decomposition is an effective way to remove ground clutter in ground-penetrating radar (GPR) applications. The main limitation of this method is the selection of principal components to completely reconstruct the ground clutter or the target. To date, no effective criteria or technology have been developed. To solve this problem, a new method is proposed in this paper. The research and analysis presented herein reveal that the root-mean-square height (RMSH) of the first-arrival curve corresponding to the ground clutter has a well-defined positive relationship with the number of singular values associated with the principal components of the ground clutter. The number of singular values of these principal components (N) can be precisely determined based on the ground clutter by a linear function, N = 0.2634D + 1.3086, where D represents the RMSH value. In addition, an algorithm called developed histogram equalization was developed to improve the contrast to highlight the targets in denoized GPR data sets. The proposed strategy of extracting the principal components of the ground clutter and highlighting the contrast between the target signal and environmental reflections was successfully applied to the field GPR data, thus demonstrating the practicality and validity of the proposed approach.
机译:奇异值分解是在接地雷达(GPR)应用中去除地杂波的有效方法。该方法的主要限制是选择主组件,以完全重建地面杂波或目标。迄今为止,没有开发有效的标准或技术。为了解决这个问题,本文提出了一种新方法。这里提出的研究和分析表明,对应于地杂波的第一到来曲线的根平方方形高度(RMSH)具有与与地面主成分相关的奇异值的数量明确的阳性关系杂乱。这些主组件(n)的奇异值的数量可以基于线性函数基于地面杂波精确地确定,n = 0.2634d + 1.3086,其中d表示RMSH值。此外,开发了一种称为显影直方图均衡的算法,以提高对比度,以突出显示地下GPR数据集中的目标。提取地面杂波的主要成分的提出策略并突出目标信号与环境反射之间的对比度被成功应用于现场GPR数据,从而展示了所提出的方法的实用性和有效性。

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