Deep Learning for Constellation-based Modulation Classification under Multipath Fading Channels

Thien Huynh-The, Cam-Hao Hua, Van-Sang Doan, Viet Quoc Pham, Toan-Van Nguyen, Dong-Seong Kim
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引用次数: 4

Abstract

Modulation classification, an intermediate step between signal detection and demodulation, is commonly deployed in many modern wireless communication systems. Although many approaches have been introduced in the last decades for identifying the modulation format of the incoming signal, they have the obstacle of mining radio characteristics for most traditional machine learning algorithms. To effectively handle this limitation, we propose an accurate modulation classification method by exploiting deep learning for being compatible with constellation diagram. A convolutional neural network (CNN), namely CRNet, is developed to proficiently learn the most relevant radio characteristics from transformed gray-scale constellation image by cross-residual connection, a novel structure for associating the intrinsic information between two processing flows specified by regular and grouped convolutional layers. Based on the experimental evaluation, CRNet achieves the classification rate of approximately 90% at +10 dB signal-to-noise ratio (SNR) under a multipath Rayleigh fading channel and further performs more accurately than some existing deep models for constellation-based modulation classification.
多径衰落信道下基于星座的深度学习调制分类
调制分类是信号检测和解调之间的中间步骤,在许多现代无线通信系统中普遍采用。尽管在过去的几十年里已经引入了许多方法来识别输入信号的调制格式,但它们存在挖掘大多数传统机器学习算法的无线电特征的障碍。为了有效地解决这一限制,我们提出了一种利用深度学习与星座图兼容的精确调制分类方法。卷积神经网络(CNN),即CRNet,通过交叉残差连接从变换后的灰度星座图像中熟练地学习最相关的无线电特征,交叉残差连接是一种新的结构,用于将规则和分组卷积层指定的两个处理流程之间的内在信息关联起来。经实验评估,在多径瑞利衰落信道下,在信噪比+10 dB的情况下,CRNet的分类率达到90%左右,在基于星座的调制分类中,CRNet比现有的一些深度模型更加准确。
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