Random neural network filter for land mine detection

H. Abdelbaki, Erol Gelenbe, Taskin Kocak, S. El-Khamy
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引用次数: 7

Abstract

The two primary measures of land mine detection performance are the probability of detection P/sub d/ and the probability of false alarm P/sub fa/. These two measures are highly inter-dependent and must be evaluated together. The relationship between the two probabilities directly affects the overall performance of the sensor in the field. In this paper we introduce a novel false alarm non-parametric filter based on the random neural network (RNN) model and the /spl delta/-technique. The study is based on mine detection using electromagnetic induction (EMI) sensors. The minefield data are pre-processed via the /spl delta/-technique before applying it to the RNN. The RNN has a predefined structure that tries to implement a mapping close enough in some precise sense to the discrimination function between non-mine and mine patterns. Limited numbers of non-mine and mine patterns, extracted from a small calibration area for a certain minefield provided by DARPA, are used for training the RNN. We show that the RNN gives effective decisions on patterns measured on other locations using different EMI sensor. The results show that the RNN produces a probability of detection up to 100 per cent with a substantial reduction of false alarms over the /spl delta/-technique (up to 40 per cent false alarm filtering).
随机神经网络地雷探测滤波器
地雷探测性能的两个主要指标是探测概率P/sub d/和虚警概率P/sub fa/。这两项措施是高度相互依赖的,必须一起加以评估。这两个概率之间的关系直接影响传感器在现场的整体性能。本文介绍了一种基于随机神经网络(RNN)模型和/spl delta/-技术的虚警非参数滤波器。这项研究是基于使用电磁感应(EMI)传感器的地雷探测。在将雷区数据应用于RNN之前,通过/spl delta/-技术对其进行预处理。RNN具有一个预定义的结构,该结构试图在某种精确意义上实现与非地雷模式和地雷模式之间的区分函数足够接近的映射。从DARPA提供的特定雷区的小校准区域中提取有限数量的非地雷和地雷模式用于训练RNN。我们表明,RNN对使用不同EMI传感器在其他位置测量的模式给出了有效的决策。结果表明,与/spl delta/-技术相比,RNN产生高达100%的检测概率,大大减少了假警报(高达40%的假警报过滤)。
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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