2023
DOI: 10.21203/rs.3.rs-3673970/v1
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TC-MSNet: A Multi-feature Extraction Neural Framework for Automatic Modulation Recognition

Yang Wang,
Yongxin Feng,
Bixue Song
et al.

Abstract: In the approaches of Automatic Modulation Recognition (AMR), modulation modes with similar characteristics are prone to be confused by the adverse factors such as noise, inevitably bringing challenges to the accuracy of recognition. Aiming at this kind of problems, this paper proposes TC-MSNet which is a novel multi-scale spatial-temporal features collaboration neural network based on deep learning. TC-MSNet extracts the Temporal Correlation (TC) features and the Multi-Scale Spatial (MSS) features respectively… Show more

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