CAAE:一种新的多评分准则无线频谱异常检测方法

Degang Sun, Sixue Lu, Wen Wang
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摘要

为了感知和理解如何使用无线频谱,人们提出了各种异常频谱检测方法。如果接收到的信号是未经授权的,或者预期信号的辐射发生了变化,我们将其判断为异常行为。我们提出了一种新的无线频谱异常检测方法CAAE来检测这两种异常行为。CAAE是一种复杂的对抗性自编码器,可以通过卷积和反卷积网络实现输入数据的特征提取和图像重建。我们以半监督学习的方式训练CAAE,在模型训练完成后,如果输入异常谱,计算过程中的各个值都会发生变化。因此,我们提出了多重评分标准来帮助提高我们模型的检测精度。输入时频瀑布图,并通过两组实验验证了模型的有效性。实验结果表明,对于我们的数据集,CAAE模型的综合检测能力优于比较算法。
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CAAE: A Novel Wireless Spectrum Anomaly Detection Method with Multiple Scoring Criterion
To sense and understand how to use the wireless spectrum, people have proposed various anomaly spectrum detection methods. We judge it as anomaly behavior if the received signal is unauthorized or the radiation of an expected signal is changed. We propose CAAE, a novel wireless spectrum anomaly detection method, to detect the two kinds of anomaly behaviors. CAAE is a complex adversarial autoencoder that can realize feature extraction and image reconstruction of input data through convolution and deconvolution networks. We train CAAE in a semi-supervised learning fashion and various values in the calculation process would change if the anomaly spectrum is input after the model training is completed. Therefore, we propose the multiple scoring criterion to help improve the detection accuracy of our model. The time-frequency waterfall graphs are input and we do two sets of experiments to prove the validity of our model. The experimental results show that the comprehensive detection capability of CAAE model is superior to the comparison algorithms for our dataset.
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