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Neural networks applied to the classification of spectral features for automatic modulation recognition

机译:神经网络应用于光谱特征分类以进行自动调制识别

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The use of back-error propagation neural networks for the automatic modulation recognition (AMR) of an intercepted signal is demonstrated. In all, ten modulation types are considered and a variety of spectral preprocessors are investigated for feature extraction. For the given training and test sets, the Welch periodogram is found to give the best results. For classification, experimental results show that neural networks match and even outdo the performance of the conventional k-nearest neighbor (k-NN) classifier for this preprocessor. Moreover, optimization of selected neural networks is demonstrated using the optimal brain damage (OBD) pruning technique.
机译:演示了将反向误差传播神经网络用于拦截信号的自动调制识别(AMR)的用法。总共考虑了十种调制类型,并研究了多种频谱预处理器用于特征提取。对于给定的训练和测试集,发现韦尔奇周期图可以提供最佳结果。对于分类,实验结果表明,对于该预处理器,神经网络的匹配性能甚至超过了传统的k最近邻(k-NN)分类器。此外,使用最佳脑损伤(OBD)修剪技术证明了对所选神经网络的优化。

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