论文标题

现代GPR目标识别方法

Modern GPR Target Recognition Methods

论文作者

Giovanneschi, Fabio, Mishra, Kumar Vijay, Gonzalez-Huici, Maria Antonia

论文摘要

传统的GPR目标识别方法包括通过删除嘈杂的签名,脱水(高通滤波以消除低频噪声),过滤,反卷积,迁移,迁移(校正调查几何形状的效果)以及可以依靠GPR响应的模拟。这些技术通常会遭受信息丢失,无法适应先前的结果以及在强烈的杂物和噪音存在下效率低下的性能。为了应对这些挑战,在过去十年中已经开发了几种先进的处理方法,以增强GPR目标识别。在本章中,我们概述了这些现代GPR处理技术。特别是,我们专注于以下方法:根据目标环境,自适应接收范围概况的处理;采用基于学习的方法,以便雷达利用先前测量的结果;应用方法在某些域或字典中稀疏的方法的应用;高级分类技术的应用;和卷积编码,提供了目标的简洁和代表特征。我们通过代表性地应用地雷检测来描述每种技术或它们的组合。

Traditional GPR target recognition methods include pre-processing the data by removal of noisy signatures, dewowing (high-pass filtering to remove low-frequency noise), filtering, deconvolution, migration (correction of the effect of survey geometry), and can rely on the simulation of GPR responses. The techniques usually suffer from the loss of information, inability to adapt from prior results, and inefficient performance in the presence of strong clutter and noise. To address these challenges, several advanced processing methods have been developed over the past decade to enhance GPR target recognition. In this chapter, we provide an overview of these modern GPR processing techniques. In particular, we focus on the following methods: adaptive receive processing of range profiles depending on the target environment; adoption of learning-based methods so that the radar utilizes the results from prior measurements; application of methods that exploit the fact that the target scene is sparse in some domain or dictionary; application of advanced classification techniques; and convolutional coding which provides succinct and representatives features of the targets. We describe each of these techniques or their combinations through a representative application of landmine detection.

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