非高斯环境下信号估计的非对称广义高斯(AGG)和对称-/spl α /稳定(S/spl α /S)噪声模型的比较

A. Tesei, R. Bozzano, C. Regazzoni
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引用次数: 4

摘要

研究了通信系统中存在一般噪声时的多电平数字信号估计问题。假设噪声是单峰的、独立的、同分布的、一般是非高斯的,即最终是非对称的、脉冲的或非脉冲的。所提出的解决方案基于先前开发的估计器,该估计器需要噪声的解析概率密度函数模型。选择的估计量最初是在S/spl α /S噪声分布的假设下应用的。本文选择非对称广义高斯(agg)模型作为描述噪声过程的合适模型,并在解码性能方面与S/spl alpha/S分布进行了讨论和比较。对S/spl α /S过程产生干扰的模拟二值序列进行了测试。测试结果概述了两类参数噪声模型的可比较性能。
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Comparison between asymmetric generalized Gaussian (AGG) and symmetric-/spl alpha/-stable (S/spl alpha/S) noise models for signal estimation in non Gaussian environments
This paper focuses on the problem of multilevel digital signal estimation in the presence of generic noise in a communication system. Noise is assumed unimodal, independent identically distributed, generically non Gaussian, that is eventually asymmetric, impulsive or not. The proposed solution is based on a previously developed estimator which requires the analytical probability density function model of the noise. The selected estimator was originally applied under the assumption of S/spl alpha/S noise distribution. In this paper the asymmetric generalized Gaussian (agg) model is selected as a suitable model to describe the noise processes: hence, it is discussed and compared with the S/spl alpha/S distributions in terms of decoding performances. Tests were performed on simulated binary sequences corrupted by interference generated as S/spl alpha/S processes. Test results outlines comparable performances of the two families of parametric noise models.
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