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A comparison of neural networks and subspace detectors for the discrimination of low-metal-content landmines

机译:神经网络和子空间探测器对低金属含量覆盖区的比较

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Low-metal content landmines can be particularly difficult to detect and classify. Their responses are often less than that of indigenous clutter and the small amounts of asymmetrically distributed metal results in significant changes in the signature of the mine as the sensor to target orientation varies. A number of algorithms have been previously developed in order to aid in target classification and reduce the false-alarm rate. In our work, multiple data sets were collected for each of five targets, of varying metal content, at several sensor to target heights and horizontal displacements using a prototype frequency-domain EMI sensor, the Geophex GEM-3. The data was then evaluated using one of three classification algorithms including a neural network, a matched filter, and a normalized matched filter. Here, a One Class One Network (OCON) architecture in which only one neural network makes a decision was selected for use. We will discuss the training and testing process for this algorithm. We will also show that the neural network performed much better than the matched filter but slightly worse than the normalized matched filter. In addition, the results demonstrate the necessity of training the algorithms with spatially collected data when precise sensor centering is not possible.
机译:低金属含量的地雷可以特别难以检测和分类。它们的反应通常小于土着杂波的反应,并且少量不对称分布的金属导致矿井签名的显着变化,因为传感器目标取向变化。先前已经开发了许多算法,以帮助目标分类并降低假警报率。在我们的工作中,在几个传感器上为五个目标中的每一个针对多个目标进行多个数据集,以使用原型频域EMI传感器的若干传感器,以瞄准高度和水平位移,Geophex Gem-3。然后使用包括神经网络,匹配滤波器和归一化匹配滤波器中的三种分类算法中的一个进行评估数据。这里,一个类网络(OCON)架构,其中仅选择一个神经网络做出决定进行使用。我们将讨论该算法的培训和测试过程。我们还将显示神经网络的表现优于匹配的过滤器,但比标准化匹配过滤器略差。此外,结果表明,当不可能有精确的传感器定心时,培训具有空间收集的数据的算法的必要性。

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