Digital modulation classification under non-Gaussian noise using sparse signal decomposition and maximum likelihood

Madhusmita Mohanty, U. Satija, Barathram Ramkumar, M. Manikandan
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引用次数: 10

Abstract

In recent years, automatic signal detection and modulation classification play a vital role in the field of cognitive radio applications. The majority of the existing signals detection and classification methods assume that the received signal is contaminated by additive white Gaussian noise. Under impulsive noise condition, the performance of the traditional modulation classification methods may be degraded. Therefore, in this paper, we investigate the application of sparse signal decomposition using an overcomplete dictionary for detection and classification of digital modulation signals. The overcomplete hybrid dictionary consists of impulse waveform and sine and cosine waveform for effectively capturing morphological components of the impulse noise and deterministic modulated signals. The proposed modulation classification method includes the following steps: sparse signal decomposition (SSD) on hybrid dictionaries, modulated signal extraction, matched filtering, and maximum likelihood (ML) classification. The performance of the direct ML and SSD-based ML classification methods are tested and validated using different modulation techniques under different Gaussian and impulse noise conditions. The proposed system achieves a classification accuracy of 89 percent at 0 dB SNR and hence outperforms the direct ML method.
基于稀疏信号分解和极大似然的非高斯噪声下的数字调制分类
近年来,信号自动检测和调制分类在认知无线电应用领域发挥着至关重要的作用。现有的大多数信号检测和分类方法都假定接收信号被加性高斯白噪声污染。在脉冲噪声条件下,传统的调制分类方法的性能会下降。因此,在本文中,我们研究了使用过完备字典的稀疏信号分解在数字调制信号检测和分类中的应用。该过完备混合字典由脉冲波形和正弦余弦波形组成,可有效捕获脉冲噪声和确定性调制信号的形态分量。提出的调制分类方法包括:基于混合字典的稀疏信号分解(SSD)、调制信号提取、匹配滤波和最大似然分类。在不同的高斯噪声和脉冲噪声条件下,使用不同的调制技术对直接ML和基于ssd的ML分类方法的性能进行了测试和验证。该系统在0 dB信噪比下实现了89%的分类精度,因此优于直接ML方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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