多级自适应滤波器用于变稀疏度系统的辨识

B. K. Das, R. Das, M. Chakraborty
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引用次数: 0

摘要

稀疏系统的自适应识别在声学和网络回波抵消、自适应信道估计等多个领域都有广泛的应用,是自适应信号处理的热门课题之一。已经观察到,有时在可识别的系统脉冲响应的稀疏量可以变化很大,这取决于系统的非平稳性质。基于压缩感知的稀疏感知自适应算法在强稀疏环境下表现良好,但在脉冲响应稀疏度降低时表现不如传统算法。我们提出了一种算法,它在稀疏和非稀疏情况下都能很好地工作,并使用双阶段自适应滤波方法动态地适应稀疏程度,该方法使用两种不同算法的两个单阶段自适应滤波器的输出的仿射组合。仿真结果表明,该算法对变稀疏度具有较好的鲁棒性。
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Multi stage adaptive filter for identification of the systems with variable sparsity
Adaptive identification of sparse systems is one of the popular adaptive signal processing topics due to its application in acoustic and network echo cancellation, adaptive channel estimation and several other areas. It has been observed that sometimes the amount of sparseness in the identifiable system impulse response can vary greatly depending on the nonstationary nature of the system. The compressive sensing based sparsity-aware adaptive algorithm performs satisfactorily in strongly sparse environment, but is shown to perform worse than the conventional ones when sparseness of the impulse response decreases. We propose an algorithm which works well both in sparse and non-sparse circumstances, and adapts dynamically to the level of sparseness using a dual stage adaptive filtering approach using an affine combination of the outputs of two single stage adaptive filters using two different algorithms. The proposed algorithm is supported by simulation results that show its robustness against variable sparsity.
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