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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Decision Fusion of Ground-Penetrating Radar and Metal Detector Algorithms—A Robust Approach
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Decision Fusion of Ground-Penetrating Radar and Metal Detector Algorithms—A Robust Approach

机译:探地雷达和金属探测器算法的决策融合—稳健方法

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摘要

Numerous detection algorithms, using various sensor modalities, have been developed for the detection of mines in cluttered and noisy backgrounds. The performance for each detection algorithm is typically reported in terms of the receiver operating characteristic (ROC), which is a plot of the probability of detection versus false alarm as a function of the threshold setting on the output decision variable of each algorithm. In this paper, we present multisensor decision-fusion algorithms that combine the local decisions of existing detection algorithms for different sensors. This offers an expedient, attractive, and much simpler alternative to the design of an algorithm that fuses multiple sensors at the data level, especially in cases of limited training data where it is difficult to make accurate estimates of multidimensional probability density functions. The goal of our multisensor decision-fusion approach is to exploit the complimentary strengths of existing multisensor algorithms so as to achieve performance (ROC) that exceeds the performance of any sensor algorithm operating in isolation. Our approach to multisensor decision fusion is based on the optimal signal detection theory using the likelihood ratio. We consider the optimal fusion of local decisions for two sensors: a ground-penetrating radar and a metal detector. A new robust algorithm for decision fusion that addresses the problem in which the statistics of the training data are not likely to exactly match the statistics of the test data is presented. ROCs are presented and compared for field data
机译:已经开发出使用各种传感器模式的多种检测算法,用于在杂乱和嘈杂的背景下检测地雷。通常根据接收器工作特性(ROC)报告每种检测算法的性能,ROC是根据每种算法的输出决策变量的阈值设置而变化的检测概率与错误警报的关系图。在本文中,我们提出了多传感器决策融合算法,该算法结合了针对不同传感器的现有检测算法的局部决策。这为在数据级别融合多个传感器的算法的设计提供了一种方便,有吸引力且简单得多的算法,尤其是在训练数据有限的情况下,难以对多维概率密度函数进行准确估计的情况下。我们的多传感器决策融合方法的目标是利用现有多传感器算法的互补优势,以实现超越任何单独运行的传感器算法的性能(ROC)。我们的多传感器决策融合方法基于使用似然比的最佳信号检测理论。我们考虑对两个传感器进行局部决策的最佳融合:探地雷达和金属探测器。提出了一种新的鲁棒的决策融合算法,该算法解决了训练数据的统计数据不太可能与测试数据的统计数据完全匹配的问题。展示并比较了ROC以获取现场数据

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