Abstract
In recent years, deep learning has been widely used in radar emitter signal identification and has significantly increased recognition rates. However, with the emergence of new institutional radars and an increasingly complex electromagnetic environment, the collection of high-quality signals becomes difficult, leading to a result that the amount of some signal types we own are too few to converge a deep neural network. Moreover, in radar emitter signal identification, most existing networks ignore the signal recognition of unknown classes, which is of vital importance for radar emitter signal identification. To solve these two problems, an improved prototypical network (IPN) belonging to metric-based meta-learning is proposed. Firstly, a reparameterization VGG (RepVGG) net is used to replace the original structure that severely limits the model performance. Secondly, we added a feature adjustment operation to prevent some extreme or unimportant samples from affecting the prototypes. Thirdly, open-set recognition is realized by setting a threshold in the metric module.
Subject
General Earth and Planetary Sciences
Reference29 articles.
1. Deep learning in neural networks: An overview
2. An Overview of Radar Emitter Classification and Identification Methods;Jin;Telecommun. Eng.,2019
3. Model-agnostic meta-learning for fast adaptation of deep networks;Finn,2017
4. Learning to Learn without Gradient Descent by Gradient Descent;Chen,2017
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