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Modulated Autocorrelation Convolution Networks for Automatic Modulation Classification Based on Small Sample Set

机译:基于小样本集的调制自动调制分类卷积网络

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摘要

For modulation classification, hand-crafted approaches can generalize well from a few samples, yet deep learning algorithms require millions of samples to achieve the superior performance with purely data-driven manner. However for many practical problems only with small sample set (SSS) available, there still remains a challenge for deep learning. In this paper, we employ deep learning to solve the modulation classification task in a more practical setting, particularly suffering from the SSS problem and with low signal-to-noise ratios (SNRs). Novel modulated autocorrelation convolution networks (MACNs) are introduced to capture periodic representation for automatic modulation classification (AMC). In MACNs, modulated communication signals are classified with the periodic local features under an autocorrelation convolution criterion. Modulation filters are utilized to enhance the capacity of the convolution filters and compress the model. On a challenging SSS learning task in low SNRs, MACNs achieve state-of-the-art performance that outperforms the existing algorithms for AMC, while compressing the size of required storage space of convolutional filters by a factor of 8 compared with convolution neural networks (CNNs).
机译:对于调制分类,手工制作的方法可以从少数样本概括,但深度学习算法需要数百万个样品以实现具有纯粹数据驱动的方式的优越性。然而,对于只有小型样本集(SSS)可用的许多实际问题,对深度学习仍然存在挑战。在本文中,我们使用深度学习在更实际的环境中解决调制分类任务,特别是患SSS问题以及低信噪比(SNR)。引入了新型调制自相关卷积网络(MACN)以捕获自动调制分类(AMC)的周期性表示。在MACN中,调制通信信号在自相关卷积标准下使用周期性本地特征进行分类。调制滤波器用于增强卷积滤波器的容量并压缩模型。在低SNR中的挑战SSS学习任务中,MACN实现了最先进的性能,以实现AMC的现有算法,同时将卷积滤波器所需存储空间的大小与卷积神经网络相比( cnns)。

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