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DSC based Dual-Resunet for radio frequency interference identification

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摘要 Radio frequency interference(RFI)will pollute the weak astronomical signals received by radio telescopes,which in return will seriously affect the time-domain astronomical observation and research.In this paper,we use a deep learning method to identify RFI in frequency spectrum data,and propose a neural network based on Unet that combines the principles of depthwise separable convolution and residual,named DSC Based Dual-Resunet.Compared with the existing Unet network,DSC Based Dual-Resunet performs better in terms of accuracy,F1 score,and MIoU,and is also better in terms of computation cost where the model size and parameter amount are 12.5%of Unet and the amount of computation is 38%of Unet.The experimental results show that the proposed network is a high-performance and lightweight network,and it is hopeful to be applied to RFI identification of radio telescopes on a large scale.
出处 《Research in Astronomy and Astrophysics》 SCIE CAS CSCD 2021年第12期315-325,共11页 天文和天体物理学研究(英文版)
基金 supported by the National Natural Science Foundation of China(Grant No.11790305) partially supported by the Specialized Research Fund for State Key Laboratories(Grant No.SYS-202002-04)。
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