论文标题

无线非正交波形的小波分类

Wavelet Classification for Over-the-Air Non-Orthogonal Waveforms

论文作者

Xu, Tongyang, Darwazeh, Izzat

论文摘要

由于存在自我创建的载体干扰(ICI),因此使用非正交多载波信号的非合作通信具有挑战性,这将阻止成功的信号分类。深度学习(DL)可以以训练复杂性为代价来处理分类任务,而无需域名,因为必须对神经网络超参数进行广泛调整。先前的工作表明,经过训练的卷积神经网络(CNN)分类器可以有效地识别特征多性多样性的信号,而当特征相似性主导时失败。因此,可以扩大信号特征多样性的预处理策略非常重要。这项工作将单级小波变换应用于手动从非正交信号中提取时频功能。研究了复合统计特征,并通过适当的统计变换将启用小波的二维时频特征网格进一步简化为一维特征向量。降低降低的功能被馈送到误差校正的输出代码(ECOC)模型,由多个二进制支持向量机(SVM)学习者组成,用于多类信号分类。低成本实验显示特征多样性显性信号的100%分类准确性,而特征相似性显性信号为90%,与CNN分类结果相比,该信号的精度为28%。

Non-cooperative communications using non-orthogonal multicarrier signals are challenging since self-created inter carrier interference (ICI) exists, which would prevent successful signal classification. Deep learning (DL) can deal with the classification task without domain-knowledge at the cost of training complexity since neural network hyperparameters have to be extensively tuned. Previous work showed that a tremendously trained convolutional neural network (CNN) classifier can efficiently identify feature-diversity dominant signals while it failed when feature-similarity dominates. Therefore, a pre-processing strategy, which can amplify signal feature diversity is of great importance. This work applies single-level wavelet transform to manually extract time-frequency features from non-orthogonal signals. Composite statistical features are investigated and the wavelet enabled two-dimensional time-frequency feature grid is further simplified into a one-dimensional feature vector via proper statistical transform. The dimensionality reduced features are fed to an error-correcting output codes (ECOC) model, consisting of multiple binary support vector machine (SVM) learners, for multiclass signal classification. Low-cost experiments reveal 100% classification accuracy for feature-diversity dominant signals and 90% for feature-similarity dominant signals, which is nearly 28% accuracy improvement when compared with the CNN classification results.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源