小波信噪比估计和干扰检测技术

Paula Quintana-Quiros, C. Tsang
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引用次数: 1

摘要

提出了一种基于小波变换理论的信噪比估计方法和干扰检测器。信噪比估计器是一种在役的非数据辅助估计器,适用于基带CWGN信道上传输的M-PSK和QAM调制信号。信号和噪声功率通过一种称为去噪的非线性小波技术分离。给出了两种基于小波的估计方法。第一种方法使用硬阈值,根据调制是恒定的还是多级包络,提取一个或几个符号周期内的幅度趋势。第二种方法使用自适应软阈值,并在信号和小波之间应用自相似准则。本文还开发了一个信噪比矩估计器,作为评估目的的参考。提出了一种基于小波间断识别的干扰检测器。该检测器用于恒定包络调制方案,将多级情况留给未来的研究。
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SNR estimation and jamming detection techniques using wavelets
An SNR estimation approach and a jamming detector based on wavelet transform theory are presented. The SNR estimator is an in-service, non-data-aided estimator that operates on M-PSK and QAM modulated signals transmitted over baseband CWGN channels. The signal and noise power are separated through a non-linear wavelet technique known as denoising. Two wavelet-based estimators are presented. The first method uses hard-thresholding which extracts the amplitude trend over one or several symbol periods, depending on whether the modulation is constant or multi-level envelope. The second method uses adaptive soft-thresholding and applies a self-similarity criterion between the signal and wavelet. A SNR Moments estimator was also developed as a reference for evaluation purposes. A jamming detector based on discontinuity recognition using wavelets is presented. The detector is implemented for constant-envelope modulation schemes, leaving the multi-level case for future research.
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