ZHANG Yu-yuan,ZHANG Li-min,YAN Wen-jun.A Space-Frequency Block Code Recognition Based on Deep Multilevel Residual Network with Low SNR[J].ACTA ELECTRONICA SINICA,2022,50(01):79-88.
Aiming at the problem of low recognition accuracy of space-frequency block code(SFBC) under low signal to noise ratio(SNR)
an automatic recognition method of SFBC based on deep multilevel residual network(DMRN) is proposed. Through time frequency analysis of cross-correlation sequence
noise reduction and non-clock synchronization
the signal recognition can be adapted to different delay of the receiver and its essential characteristics can be reflected. DMRN with multi-layer spanning connections was constructed to fully integrate the features of deep and shallow layers to realize SFBC recognition. This method does not need to set thresholds and hypothesis testing statistics
and overcomes the defects of traditional algorithms in extracting features manually
for example
complex parameter adjustment process and high requirement of professional experience
and it has strong adaptability to low SNR environment. At -14dB
the recognition accuracy reaches 95.8%. The feature transformation and preprocessing methods proposed in this paper provide a new idea for the combination of feature extraction based recognition method and deep learning
which can also be applied to other fields of communication signal recognition.
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references
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