基于Siamese网络的鲁棒信号分类

Zachary L. Langford, Logan Eisenbeiser, Matthew Vondal
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引用次数: 12

摘要

我们提出了一种使用连体卷积神经网络(cnn)的噪声鲁棒信号分类方法,该方法采用链接并行结构对输入之间的相似性进行排序。Siamese网络具有强大的功能,包括使用少量样本和噪声输入进行有效学习。本文重点研究了暹罗cnn在跨信噪比(SNR)和数据集大小对非常相似的无线信号发射器进行分类时所表现出的优势。在没有任何先验信息的情况下,候选的siamese和基线cnn在压缩频谱图图像上进行训练,以区分具有随机符号和相同信号参数的调制信号脉冲,除了商业射频发射器参考振荡器不确定性分布中常见的轻微频率偏移。与基线CNN方法相比,本文提出的方法在较低信噪比下的分类性能有所提高。此外,这一优势还具有利用网络内嵌入实现卓越、低信噪比、半监督分类的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Signal Classification Using Siamese Networks
We propose a noise-robust signal classification approach using siamese convolutional neural networks (CNNs), which employ a linked parallel structure to rank similarity between inputs. Siamese networks have powerful capabilities that include effective learning with few samples and noisy inputs. This paper focuses on the advantages that siamese CNNs exhibit for classification of quite similar wireless signal emitters across signal-to-noise ratio (SNR) and dataset size. Without any a priori information, candidate siamese and baseline CNNs were trained on compressed spectrogram images to distinguish modulated signal pulses with randomized symbols and identical signal parameters, save for slight frequency offsets commonly exhibited in commercial RF emitter reference oscillator uncertainty distributions. Compared with baseline CNN approaches the proposed methods demonstrate improved classification performance under poor SNR. Moreover, this advantage holds the potential for superior, low-SNR, semi-supervised classification using embeddings from within the networks.
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