计算机科学
特征(语言学)
模式识别(心理学)
特征提取
调制(音乐)
人工智能
信号(编程语言)
滤波器(信号处理)
特征学习
代表(政治)
极限(数学)
语音识别
匹配滤波器
机器学习
相位调制
频率调制
信号处理
相(物质)
绩效改进
作者
Jianxing Liu,Shuyuan Yang,Zhixi Feng,Qiukai Pan,Yue Ma,Shuai Chen,Yong Zu
标识
DOI:10.1109/tccn.2026.3658752
摘要
Automatic modulation classification (AMC) plays a pivotal role in cognitive communication systems. Recent advances in contrastive learning have shown promising feature extraction capabilities for AMC tasks using large-scale unlabeled signal samples. However, the effectiveness of these approaches remains constrained by two fundamental challenges: 1) the mono-modal representation constraints that limit feature diversity, and 2) the suboptimal handling of negative samples leading to feature dispersion.To address these issues, a multi-modal contrastive learning (MM-CL) framework for self-supervised signal modulation classification is proposed in this paper. In detail, we propose a novel signal modality, the phase density (PD), which enriches the phase distribution representation of the original signal. Additionally, we employ a top-k instance contrastive loss to filter out false negative samples, which results in feature dispersion. Experimental results on the four datasets show that MM-CL outperforms existing methods, achieving an average improvement of 4.7% in 0-18 dB signal-to-noise ratio and 1-shot scenarios. Above all, MM-CL provides an effective framework for multi-modal AMC, suggesting potential avenues for optimizing model efficiency and exploring diverse feature representations.
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