首页> 外文会议>Conference on detection and sensing of mines, explosive objects, and obscured targets XIV; 20090413-17; Orlando, FL(US) >Context-Dependent Feature Selection for Landmine Detection with Ground-Penetrating Radar
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Context-Dependent Feature Selection for Landmine Detection with Ground-Penetrating Radar

机译:探地雷达在地雷探测中的上下文相关特征选择

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摘要

We present a novel method for improving landmine detection with ground-penetrating radar (GPR) by utilizing a priori knowledge of environmental conditions to facilitate algorithm training. The goal of Context-Dependent Feature Selection (CDFS) is to mitigate performance degradation caused by environmental factors. CDFS operates on GPR data by first identifying its environmental context, and then fuses the decisions of several classifiers trained on context-dependent subsets of features. CDFS was evaluated on GPR data collected at several distinct sites under a variety of weather conditions. Results show that using prior environmental knowledge in this fashion has the potential to improve landmine detection.
机译:我们提出了一种通过利用环境条件的先验知识来促进算法训练的,改进的探地雷达(GPR)地雷探测方法。上下文相关特征选择(CDFS)的目标是减轻由环境因素引起的性能下降。 CDFS首先通过识别GPR数据的环境背景,然后将几个分类器的决策融合在一起,这些分类器是根据与背景相关的特征子集进行训练的。根据在各种天气条件下从几个不同地点收集的GPR数据对CDFS进行了评估。结果表明,以这种方式使用现有的环境知识有可能改善地雷的探测。

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