Author:
Li Ming,Ren Qinghua,Wu Jialong
Abstract
Abstract
A classification and recognition algorithm based on short-time Fourier transform and convolutional neural network (STFT-CNN) is proposed to solve the common interference signal classification and recognition problem in transform domain communication systems. In this algorithm, the time-spectrum diagram of interference signals obtained by short-time Fourier transform is input into the vggnet-16 network model improved according to STFT characteristics for feature learning and training, and the classification and recognition of signals are completed. Simulation results show that the proposed algorithm for comprehensive recognition rate reached 97.7%, 6 kinds of jamming signal in low SNR circumstance still can reach more than 93% recognition rate, compared with the traditional algorithm, this method not only improves the classification recognition rate of single interference, but also improves the recognition of mixed interference ability, has the ability to resist low signal-to-noise ratio, makes the transform domain communication system can choose transform domain for anti-interference, provides theoretical basis and support for the application of convolutional neural network in anti-interference of communication system in transform domain.
Subject
General Physics and Astronomy
Reference10 articles.
1. Classification and Recognition of TDCS Interference Based on Signal Feature Space [J];Wang;Systems Engineering and Electronics,2017
2. Radar signal recognition by CWD picture feature [J];Tavakoli;International Journal of Communications Network & System Sciences,2012
3. Signal Classification Method Based on Full Bispectrum and Convolutional Neural Networks [J];Fang;Application Research of Computers,2018
4. Over the air deep learning based radio signal classification [J];O’Shea;IEEE Journal of Selected Topics in Signal Processing,2018
5. Automatic radar waveform recognition based on deep convolutional denoising auto-encoders [J];Zhou;Circuits, System, and Signal Processing,2018
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