Intelligent Radio Signal Processing: A Survey

  title={Intelligent Radio Signal Processing: A Survey},
  author={Quoc-Viet Pham and Nhan Thanh Nguyen and Thien Huynh-The and Long Bao Le and Kyungchun Lee and Won-Joo Hwang},
  journal={IEEE Access},
Intelligent signal processing for wireless communications is a vital task in modern wireless systems, but it faces new challenges because of network heterogeneity, diverse service requirements, a massive number of connections, and various radio characteristics. Owing to recent advancements in big data and computing technologies, artificial intelligence (AI) has become a useful tool for radio signal processing and has enabled the realization of intelligent radio signal processing. This survey… 
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