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首页> 外文期刊>IEEE Transactions on Signal Processing >Tensor product basis approximations for Volterra filters
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Tensor product basis approximations for Volterra filters

机译:Volterra滤波器的张量积基近似

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The paper studies approximations for a class of nonlinear filters known as Volterra filters. Although the Volterra filter provides a relatively simple and general representation for nonlinear filtering, it is often highly overparameterized. Due to the large number of parameters, the utility of the Volterra filter is limited. The overparameterization problem is addressed in the paper using a tensor product basis approximation (TPBA). In many cases, a Volterra filter may be well approximated using the TPBA with far fewer parameters. Hence, the TPBA offers considerable advantages over the original Volterra filter in terms of both implementation and estimation complexity. Furthermore, the TPBA provides useful insight into the filter response. The paper studies the crucial issue of choosing the approximation basis. Several methods for designing an appropriate approximation basis and error bounds on the resulting mean-square output approximation error are derived. Certain methods are known to be nearly optimal.
机译:本文研究了一类称为Volterra滤波器的非线性滤波器的近似值。尽管Volterra滤波器为非线性滤波提供了一个相对简单和通用的表示形式,但它经常被高度参数化。由于参数数量众多,Volterra滤波器的实用性受到限制。本文使用张量积基本近似(TPBA)解决了过参数化问题。在许多情况下,使用具有更少参数的TPBA可以很好地近似Volterra滤波器。因此,就实现和估计复杂度而言,TPBA与原始Volterra滤波器相比具有明显优势。此外,TPBA还提供了有关过滤器响应的有用信息。本文研究了选择近似基础的关键问题。推导了几种用于设计适当的近似基础和产生的均方根输出近似误差的误差范围的方法。已知某些方法几乎是最佳的。

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