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A Low Complexity Feature Extraction for the RF Fingerprinting Process

机译:用于射频指纹识别过程的低复杂度特征提取

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Feature extraction, as an important part of the RF fingerprinting process, aims to extract the subtle features that can reflect the difference of different radio frequency(RF) devices. How to reduce the sample dimension, reduce the test training time while ensuring the classification recognition rate is an important aspect of its research. In this paper, the wavelet coefficients are extracted from the RF transmit signal. By combining the ReliefF algorithm with the PCA algorithm, the signal dimension is reduced to 29%. Experimental results show that the proposed method can effectively reduce the data dimension and time consumption while ensuring the SVM classification accuracy, which it is specially suitable for applying in lightweight identification of the terminal environments.
机译:特征提取作为RF指纹识别过程的重要组成部分,旨在提取可以反映不同射频(RF)设备差异的细微特征。如何在保证分类识别率的同时减小样本量,减少测试训练时间是其研究的重要方面。在本文中,小波系数是从射频发射信号中提取的。通过将ReliefF算法与PCA算法结合,信号尺寸减小到29%。实验结果表明,该方法在保证支持向量机分类准确度的同时,可以有效降低数据量和时间消耗,特别适用于终端环境的轻量级识别。

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