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Linear prediction and subspace fitting blind channel identification based on cyclic statistics

机译:基于循环统计的线性预测与子空间拟合盲通道识别

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Blind channel identification and equalization based on second-order statistics by subspace fitting and linear prediction have received a lot of attention lately. On the other hand, the use of cyclic statistics in fractionally sampled channels has also raised considerable interest. We propose to use these statistics in subspace fitting and linear prediction for (possibly multiuser and multiple antennas) channel identification. We base our identification schemes on the cyclic statistics, using the stationary multivariate representation introduced by Gladyshev (1961) and by Miamee (1990, 1993). This leads to the use of all cyclic statistics. The methods proposed appear to have good performance.
机译:基于子空间拟合和线性预测的二阶统计量的盲信道识别和均衡最近引起了广泛的关注。另一方面,在部分采样的通道中使用循环统计也引起了极大的兴趣。我们建议在子空间拟合和线性预测中(可能是多用户和多天线)信道识别使用这些统计信息。我们使用Gladyshev(1961)和Miamee(1990,1993)引入的平稳多元表示法,基于循环统计数据建立我们的识别方案。这导致所有循环统计信息的使用。提出的方法似乎具有良好的性能。

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