Abstract:
It is necessary but difficult to obtain a large number of labeled samples to train the classification model in many real scenes. This letter proposes an approach for spec...Show MoreMetadata
Abstract:
It is necessary but difficult to obtain a large number of labeled samples to train the classification model in many real scenes. This letter proposes an approach for specific emitter identification(SEI) by introducing model-agnostic meta-learning, which can achieve high accuracy in the case of a limited number of labeled training samples. Specially, we improve the approach to make it suitable for the classification of electromagnetic signals of multiple types of equipments, without spending a lot of time and data to retrain the model structure. The data collected from ZigBee devices and UAVs are used to verify the proposed approach. The simulation results shows that the accuracy of proposed approach can reach more than 90% even though the training task and testing task are two types of devices.
Published in: IEEE Communications Letters ( Volume: 26, Issue: 2, February 2022)
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- IEEE Keywords
- Index Terms
- Specific Identification ,
- Specific Emitter Identification ,
- Model-agnostic Meta-learning Approach ,
- Training Tasks ,
- Types Of Equipment ,
- Test Task ,
- Deep Learning ,
- Learning Algorithms ,
- Convolutional Network ,
- Convolutional Neural Network ,
- Gradient Descent ,
- Convolutional Layers ,
- White Noise ,
- Additive Noise ,
- Radiation Source ,
- Stochastic Gradient Descent ,
- Radio Waves ,
- Handcrafted Features ,
- Part Of Signal ,
- Small Amount Of Data ,
- Query Set ,
- Support Set ,
- Internal Algorithm ,
- Physical Layer ,
- Hand-crafted Feature Extraction ,
- High Recognition Rate
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Specific Identification ,
- Specific Emitter Identification ,
- Model-agnostic Meta-learning Approach ,
- Training Tasks ,
- Types Of Equipment ,
- Test Task ,
- Deep Learning ,
- Learning Algorithms ,
- Convolutional Network ,
- Convolutional Neural Network ,
- Gradient Descent ,
- Convolutional Layers ,
- White Noise ,
- Additive Noise ,
- Radiation Source ,
- Stochastic Gradient Descent ,
- Radio Waves ,
- Handcrafted Features ,
- Part Of Signal ,
- Small Amount Of Data ,
- Query Set ,
- Support Set ,
- Internal Algorithm ,
- Physical Layer ,
- Hand-crafted Feature Extraction ,
- High Recognition Rate
- Author Keywords