Abstract

Specific emitter identification (SEI) is significant in military communication scenarios, cognitive radio and self-organized networks. However, these methods only consider the feature of signals or the feature after signal transformation. In other words, the time-domain correlation of each feature and relationships between features are seldom taken into account. A novel method is therefore proposed, which includes a transformation to convert the specific emitter signal into a graph tensor and a model named time domain graph tensor attention network (TDGTAN) to encode graph tensors for SEI. Specifically, the model includes two main parts. The first part is intra graph propagation, which uses the relationship between different sampling points through message propagation in each graph. The other part is inter propagation, which propagates cross layer messages between different graphs at the same sampling point, so as to realize the use of the relationship between different features. Extensive experiments are conducted on real-world dataset, and the result shows that the proposed approach acquires higher accuracy and intriguing anti-interference performance. In addition, the proposed model also has higher parameter utilization and calculation efficiency.

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