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首页> 外文期刊>EURASIP journal on advances in signal processing >Adaptive multichannel sequential lattice prediction filtering method for ARMA spectrum estimation in subbands
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Adaptive multichannel sequential lattice prediction filtering method for ARMA spectrum estimation in subbands

机译:子带中ARMA频谱估计的自适应多通道顺序晶格预测滤波方法

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A multichannel characterization for autoregressive moving average (ARMA) spectrum estimation in subbands is considered in this article. The fullband ARMA spectrum estimation can be realized in two-channels as a special form of this characterization. A complete orthogonalization of input multichannel data is accomplished using a modified form of sequential processing multichannel lattice stages. Matrix operations are avoided, only scalar operations are used, and a multichannel ARMA prediction filter with a highly modular and suitable structure for VLSI implementations is achieved. Lattice reflection coefficients for autoregressive (AR) and moving average (MA) parts are simultaneously computed. These coefficients are then converted to process parameters using a newly developed Levinson–Durbin type multichannel conversion algorithm. Hence, a novel method for spectrum estimation in subbands as well as in fullband is developed. The computational complexity is given in terms of model order parameters, and comparisons with the complexities of nonparametric methods are provided. In addition, the performance is visually and statistically compared against those of the nonparametric methods under both stationary and nonstationary conditions.
机译:本文考虑了子带中自回归移动平均(ARMA)频谱估计的多通道表征。作为此表征的一种特殊形式,全频带ARMA频谱估计可以在两个通道中实现。输入多通道数据的完全正交是使用顺序处理多通道晶格级的改进形式来完成的。避免了矩阵运算,仅使用了标量运算,并且实现了具有高度模块化且适用于VLSI实现的结构的多通道ARMA预测滤波器。同时计算自回归(AR)和移动平均(MA)部分的晶格反射系数。然后使用新开发的Levinson-Durbin型多通道转换算法将这些系数转换为过程参数。因此,开发了一种用于子带以及全频带中的频谱估计的新颖方法。根据模型阶数参数给出了计算复杂度,并与非参数方法的复杂度进行了比较。此外,在静态和非静态条件下,该性能在视觉上和统计上都与非参数方法相比。

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