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Feature extraction and classification of metal detector signals using the wavelet transform and the fuzzy ARTMAP neural network

机译:基于小波变换和模糊ARTMAP神经网络的金属探测器信号特征提取与分类

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摘要

In this paper, the Fuzzy ARTMAP (FAM) neural network is used to classify metal detector signals into different categories for automated target discrimination. Feature extraction of the metal detector signals is conducted using a wavelet transform technique. The FAM neural network is then employed to classify the extracted features into different target groups. A series of experiments using individual FAM networks and a voting FAM network is conducted. Promising classification accuracy rates are obtained from using individual and voting FAM networks, respectively. The experimental outcomes positively demonstrate the effectiveness of the generated features, and of the FAM network in classifying metal detector signals for automated target discrimination tasks.
机译:在本文中,模糊ARTMAP(FAM)神经网络用于将金属探测器信号分类为不同类别,以实现自动目标识别。金属检测器信号的特征提取是使用小波变换技术进行的。然后,使用FAM神经网络将提取的特征分类为不同的目标组。使用单独的FAM网络和投票FAM网络进行了一系列实验。分别通过使用单独的FAM网络和投票的FAM网络可以获得有希望的分类准确率。实验结果积极地证明了生成的特征以及FAM网络在对金属探测器信号进行分类以进行自动目标识别任务方面的有效性。

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