唐哲, 雷迎科, 蔡晓霞. 通信辐射源的潜在细微特征提取方法[J]. 电波科学学报, 2016, 31(5): 883-890. doi: 10.13443/j.cjors.2016011401
      引用本文: 唐哲, 雷迎科, 蔡晓霞. 通信辐射源的潜在细微特征提取方法[J]. 电波科学学报, 2016, 31(5): 883-890. doi: 10.13443/j.cjors.2016011401
      TANG Zhe, LEI Yingke, CAI Xiaoxia. The extraction of latent fine feature of communication transmitter[J]. CHINESE JOURNAL OF RADIO SCIENCE, 2016, 31(5): 883-890. doi: 10.13443/j.cjors.2016011401
      Citation: TANG Zhe, LEI Yingke, CAI Xiaoxia. The extraction of latent fine feature of communication transmitter[J]. CHINESE JOURNAL OF RADIO SCIENCE, 2016, 31(5): 883-890. doi: 10.13443/j.cjors.2016011401

      通信辐射源的潜在细微特征提取方法

      The extraction of latent fine feature of communication transmitter

      • 摘要: 为了充分挖掘高维特征空间中辐射源的细微特征, 提出一种基于全局潜在低秩表示(Global Latent Low Rank Representation, GLat-LRR)的通信辐射源潜在细微特征提取方法.首先, 提取通信辐射源信号的瞬时频率, 通过傅里叶变换将信号投影到高维特征空间; 挖掘特征样本之间全局的低秩结构和维度之间全局的潜在低秩关系, 将特征样本集作为整体应用到潜在低秩表示模型中, 利用维度之间低秩关系得到特征样本集的潜在部分矩阵, 每个列向量即为每个通信辐射源信号的潜在细微特征向量.在实际采集的同厂家同型号FM电台数据集上, 该方法提取的潜在细微特征能够显著提高通信辐射源个体识别的性能.

         

        Abstract: In order to fully exploit the fine features of transmitter in the high dimensional feature space, we propose a method for extracting the fine features of communication transmitter based on global latent low rank representation. Firstly, we extract the instantaneous frequency of the signal of communication transmitter, and then transform the signal into a high dimensional feature space by the Fourier transformation. Secondly, the global low-rank structure between samples and global latent low-rank relationship between the dimensions are mined. Therefore, we can put the whole training sample set in the latent low rank representation model and get the latent part matrix of training sample set based on the low rank relationship between feature dimensions. Every column vector of latent part matrix is the latent fine feature vector of each communication transmitter signal. On the actually collected data set of the FM radios with the same model and manufacturer, the latent fine features extracted by our method can significantly improve recognition performance of different transmitter radios which reflects the effectiveness and robustness of our method.

         

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