Radar emitter signal recognition method based on improved collaborative semi-supervised learning

IF 1.9 3区 计算机科学 Q3 AUTOMATION & CONTROL SYSTEMS Journal of Systems Engineering and Electronics Pub Date : 2023-10-01 DOI:10.23919/JSEE.2023.000126
Jin Tao;Zhang Xindong
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Abstract

Rare labeled data are difficult to recognize by using conventional methods in the process of radar emitter recognition. To solve this problem, an optimized cooperative semisupervised learning radar emitter recognition method based on a small amount of labeled data is developed. First, a small amount of labeled data are randomly sampled by using the bootstrap method, loss functions for three common deep learning networks are improved, the uniform distribution and cross-entropy function are combined to reduce the overconfidence of softmax classification. Subsequently, the dataset obtained after sampling is adopted to train three improved networks so as to build the initial model. In addition, the unlabeled data are preliminarily screened through dynamic time warping (DTW) and then input into the initial model trained previously for judgment. If the judgment results of two or more networks are consistent, the unlabeled data are labeled and put into the labeled data set. Lastly, the three network models are input into the labeled dataset for training, and the final model is built. As revealed by the simulation results, the semi-supervised learning method adopted in this paper is capable of exploiting a small amount of labeled data and basically achieving the accuracy of labeled data recognition.
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基于改进的协同半监督学习的雷达辐射源信号识别方法
在雷达辐射源识别过程中,使用常规方法很难识别出稀有的标记数据。为了解决这个问题,提出了一种基于少量标记数据的优化协同半监督学习雷达辐射源识别方法。首先,使用bootstrap方法对少量标记数据进行随机采样,改进了三种常见深度学习网络的损失函数,将均匀分布和交叉熵函数相结合,减少了softmax分类的过度自信。随后,采用采样后获得的数据集对三个改进的网络进行训练,以建立初始模型。此外,通过动态时间扭曲(DTW)对未标记的数据进行初步筛选,然后输入到先前训练的初始模型中进行判断。如果两个或多个网络的判断结果一致,则对未标记的数据进行标记,并将其放入标记的数据集中。最后,将三个网络模型输入到标记的数据集中进行训练,并建立最终的模型。仿真结果表明,本文采用的半监督学习方法能够利用少量的标记数据,基本上达到了标记数据识别的准确性。
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来源期刊
Journal of Systems Engineering and Electronics
Journal of Systems Engineering and Electronics 工程技术-工程:电子与电气
CiteScore
4.10
自引率
14.30%
发文量
131
审稿时长
7.5 months
期刊介绍: Information not localized
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