基带
计算机科学
卷积神经网络
调制(音乐)
人工神经网络
现场可编程门阵列
人工智能
正交(天文学)
模式识别(心理学)
电子工程
语音识别
电信
带宽(计算)
工程类
计算机硬件
哲学
美学
作者
Ahmed Emad,Hassan Mohamed,Alyaa Farid,Ahmed M. Hassan,Rawda M. Sayed,Hassan Aboushady,Hassan Mostafa
标识
DOI:10.1109/iscas51556.2021.9401658
摘要
This paper presents a classification Convolutional Neural Network model for modulation recognition. The model is capable of classifying 11 different modulation techniques based on their In-phase and Quadrature components at baseband. The classification accuracy is higher than 80% for signals with a Signal-to-Noise Ratio higher than 2 dB. The model performance is evaluated using the same In-phase and Quadrature component data-sets used in the state of the art. Compared to previous work, the number of parameters and multiplications/additions is reduced by several orders of magnitude. The proposed Convolutional Neural Network is implemented on FPGA and achieves the same performance as the GPU model. Compared to other FPGA implementations of RF signal classifiers, the proposed implementation classifies twice as much modulation schemes while consuming only half the dynamic power.
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