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首页> 外文期刊>Journal of Electronics (CHINA) >MAXIMUM LIKELIHOOD SOURCE SEPARATION FOR FINITE IMPULSE RESPONSE MULTIPLE INPUT-MULTIPLE OUTPUT CHANNELS IN THE PRESENCE OF ADDITIVE NOISE
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MAXIMUM LIKELIHOOD SOURCE SEPARATION FOR FINITE IMPULSE RESPONSE MULTIPLE INPUT-MULTIPLE OUTPUT CHANNELS IN THE PRESENCE OF ADDITIVE NOISE

机译:存在加性噪声时有限脉冲响应多输入多输出通道的最大似然源分离

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摘要

Blind identification-blind equalization for Finite Impulse Response (FIR) Multiple Input-Multiple Output (MIMO) channels can be reformulated as the problem of blind sources separation. It has been shown that blind identification via decorrelating sub-channels method could recover the input sources. The Blind Identification via Decorrelating Sub-channels(BIDS) algorithm first constructs a set of decorrelators, which decorrelate the output signals of subchannels, and then estimates the channel matrix using the transfer functions of the decorrelators and finally recovers the input signal using the estimated channel matrix. In this paper, a new approximation of the input source for FIR-MIMO channels based on the maximum likelihood source separation method is proposed. The proposed method outperforms BIDS in the presence of additive white Gaussian noise.
机译:有限冲激响应(FIR)的盲识别-盲均衡可以将多输入多输出(MIMO)信道重新构造为盲源分离问题。已经表明,通过去相关子信道方法的盲识别可以恢复输入源。通过解相关子信道的盲识别(BIDS)算法首先构造一组解相关器,该解相关器对子信道的输出信号进行解相关,然后使用解相关器的传递函数来估计信道矩阵,最后使用所估计的信道来恢复输入信号。矩阵。本文提出了一种基于最大似然源分离方法的FIR-MIMO信道输入源的新近似方法。在存在加性高斯白噪声的情况下,所提出的方法优于BIDS。

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