基于高阶累积量和CatBoost的小样本信号调制识别

Xin Tan, Zhidong Xie, Xinwang Yuan, Gang Yang, Yung-Su Han
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引用次数: 0

摘要

在开放环境下获取足够的标签样本难度大、成本高,小样本问题的研究已成为信号调制识别领域的一个重要方向。我们首次创新地提出使用CatBoost来解决这个问题。我们首先从I/Q信号中提取高阶累积量特征,然后加入切片操作使该特征适合算法训练,最后利用CatBoost在小样本条件下的高分类精度,实现对小样本信号的有效识别。实验对0 ~ 8dB范围内的9类信号,在每种信号各有20个样本和200个样本时,综合识别准确率分别为93.3%和95.1%。与其他传统的机器学习算法和深度学习算法相比,我们的方法效率更高。
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Small Sample Signal Modulation Recognition based on Higher-order Cumulants and CatBoost
It is difficult and costly to obtain sufficient label samples in an open environment, and the study of small sample problem has become an important direction in the field of signal modulation recognition. For the first time, we innovatively propose to use CatBoost to solve this. First, we extract high-order cumulants features from the I/Q signal, and then add slicing operations to make this feature suitable for algorithm training, and finally take advantage of CatBoost's high classification accuracy under small sample condition, to achieve effective recognition of small sample signals. The experiment obtained the results of comprehensive recognition accuracy of 93.3% and 95.1% when there are 20 and 200 samples in each type of 9 types of signals from 0 to 8dB, respectively. Compared with other traditional machine learning algorithms and deep learning algorithms, our method is more efficient.
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