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首页> 外文期刊>IEEE Transactions on Signal Processing >Blind and Semi-Blind FIR Multichannel Estimation: (Global) Identifiability Conditions
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Blind and Semi-Blind FIR Multichannel Estimation: (Global) Identifiability Conditions

机译:多通道盲和半盲估计:(全局)可识别性条件

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Two channel estimation methods are often opposed: training sequence methods that use the information induced by known symbols and blind methods that use the information contained in the received signal and, possibly, hypotheses on the input symbol statistics but without integrating the information from known symbols, if present. Semi-blind methods combine both training sequence and blind information and are more powerful than the two methods separately. We investigate the identifiability conditions for blind and semi-blind finite impulse response (FIR) multichannel estimation in terms of channel characteristics, received data length, and input symbol excitation modes, as well as number of known symbols for semi-blind estimation. Two models corresponding to two different cases of a priori knowledge on the input symbols are studied: the deterministic model in which the unknown symbols are considered as unknown deterministic quantities and the Gaussian model in which they are considered as Gaussian random variables. This last model includes the methods using the second-order statistics of the received data. Semi-blind methods appear superior to blind and training sequence methods and allow the estimation of any channel with only few known symbols. Furthermore, the Gaussian model appears more robust than the deterministic one as it leads to less demanding identifiability conditions.
机译:经常会遇到两种信道估计方法:使用由已知符号引起的信息的训练序列方法和使用包含在接收信号中的信息以及可能关于输入符号统计量的假设但不整合已知符号信息的盲法,如果存在。半盲方法结合了训练序列和盲信息,并且比两种方法分别具有更强大的功能。我们根据信道特性,接收数据长度和输入符号激励模式,以及用于半盲估计的已知符号数量,研究了盲和半盲有限冲激响应(FIR)多通道估计的可识别性条件。研究了与输入符号的先验知识的两种不同情况相对应的两个模型:将未知符号视为未知确定量的确定性模型和将它们视为高斯随机变量的高斯模型。最后一个模型包括使用接收数据的二阶统计量的方法。半盲法似乎优于盲法和训练序列法,并允许仅用很少的已知符号来估计任何信道。此外,高斯模型比确定性模型更健壮,因为它导致了要求不高的可识别性条件。

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