Multifunction Radar Working Mode Recognition With Unsupervised Hierarchical Modeling and Functional Semantics Embedding Based LSTM
Chao He, Lei Zhang, Song Wei, Yuyuan Fang
Abstract
Recognition of multifunction radar (MFR) working modes provides essential information to assess the behavior of a noncooperative MFR. However, it typically depends on substantial previously intercepted waveforms. To enable better recognition with limited preobservations, this article proposes a radar-semantics-modeled long short-term memory (LSTM) recognition algorithm with embedding radar waveform functionality features and utilizing contextual recognition of an LSTM network. On the one hand, unsupervised hierarchical modeling and functional semantics embedding extract MFR behavior units and embed the artificial functional semantics of waveforms based on experts’ knowledge about waveform functionalities. On the other hand, an LSTM network captures static and dynamic features within sequences of radar semantic data, recognizing the MFR working mode. Experimental comparisons on preset datasets illustrate that the proposed algorithm adapts more effectively to parameter variations and migrates the recognition between the MFRs with similar functional behavior features.