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Specific Emitter Identification Based on Deep Dense Feature Network

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Published:01 February 2021Publication History

ABSTRACT

In the specific emitter identification, the current traditional classification and identification methods have difficulty in extracting fingerprint features, and the accuracy of fingerprint identification is low. In order to better extract the fingerprint features, a specific emitter identification algorithm is proposed based on the Convolutional Neural Network Dense Block module, called the Deep Dense Feature Network (DDFN). The network can effectively realize automatic extraction and multiplexing of fingerprint features, strengthen the transfer of features, and reduce the problem of vanishing gradients. The experimental results show that DDFN can achieve a classification accuracy of 93.17%, and can better realize the identification of specific radiation sources in a complex electro-magnetic environment.

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    • Published in

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      EITCE '20: Proceedings of the 2020 4th International Conference on Electronic Information Technology and Computer Engineering
      November 2020
      1202 pages
      ISBN:9781450387811
      DOI:10.1145/3443467

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      Publication History

      • Published: 1 February 2021

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      EITCE '20 Paper Acceptance Rate214of441submissions,49%Overall Acceptance Rate508of972submissions,52%
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