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Blind Equalization of Constant Modulus Signals Based on Gaussian Process for Classification

机译:基于高斯过程对分类的恒定模量信号盲均衡

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摘要

Blind equalization can be combined with soft-input decoders to greatly improve the performance of communication system. However, most blind equalization algorithms are not designed to provide posterior probability, which is essential for soft-input decoders. In this paper, blind equalization based on Gaussian process for classification (GPC), which could output such information, is applied to optimally detect the constant modulus signals. The scheme is implemented by automatically selecting proper initial training data set and continuously incorporating more appropriate points into training data set with a iteration process. During the iteration process, we utilize all equalizer input symbols that can be assumed to be a certain class label at a high probability as training data to make prediction with GPC model, and give out posterior probability of each input symbol under a specific class label. The proposed blind equalizer has been proved to be able to provide a better performance in both linear channel and nonlinear channel compared with other blind equalizers.
机译:盲均衡可以与软输入解码器组合,从而大大提高通信系统的性能。然而,大多数盲均化算法不设计为提供后验概率,这对于软输入解码器至关重要。在本文中,应用基于用于分类(GPC)的盲均衡,其可以输出这种信息,以最佳地检测恒定模量信号。该方案是通过自动选择适当的初始训练数据集,并将更合适的点连续地结合到具有迭代过程的训练数据集中。在迭代过程中,我们利用所有均衡器输入符号,可以假设以高概率作为训练数据的特定类标签,以便用GPC模型进行预测,并在特定类标签下泄露每个输入符号的后验概率。已经证明,与其他盲均衡器相比,所提出的盲均衡器能够在线性通道和非线性信道提供更好的性能。

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