IEEE Photonics Journal (Jan 2022)

Efficient Modulation Classification Based on Complementary Folding Algorithm in UVLC System

  • Chi Xu,
  • Ruizhe Jin,
  • Wendi Gao,
  • Nan Chi

DOI
https://doi.org/10.1109/JPHOT.2022.3197148
Journal volume & issue
Vol. 14, no. 4
pp. 1 – 6

Abstract

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Modulation classification (MC) has become a widely used technology, which is of great value in both commercial and civil applications. It actually completes the classification task of modulation signal through various means. In recent years, modulation format recognition based on deep learning (DL) has achieved great success. However, in practical application, the computational cost and model complexity have become the biggest obstacles of the traditional MC based on DL. To solve this problem, we propose complementary folding algorithm (CFA). This is an algorithm based on classical modulation classification (CMC), which folds and splices the features of the input neural network (NN), so that these features have both large-scale and small-scale dual branch receptive fields. The research results prove that under the same network structure and data quantity, both the correctness rate and the convergence speed of CFA are significantly improved in the communication experiment based on underwater visible light communication (UVLC). It is also worth mentioning that because of the particularity and complexity of the channel, UVLC system can be divided into different regions. In any region, CFA performs better than CMC, so we can prove that this algorithm also has excellent robustness.

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