Xing et al., 2018 - Google Patents
Method to reduce the signal‐to‐noise ratio required for modulation recognition based on logarithmic propertiesXing et al., 2018
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- 5931931417306385561
- Author
- Xing Z
- Gao Y
- Publication year
- Publication venue
- IET Communications
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Here, the authors present a novel, simple, and effective way of improving additive white Gaussian noise resistance and reducing the signal‐to‐noise ratio (SNR) required for modulation recognition. Working on the theoretical basis that the ratio of two logarithmic …
- 230000000051 modifying 0 title abstract description 42
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