Title :
Design of Sparse FIR Filters With Joint Optimization of Sparsity and Filter Order
Author :
Aimin Jiang ; Hon Keung Kwan ; Yanping Zhu ; Xiaofeng Liu ; Ning Xu ; Yibin Tang
Author_Institution :
Coll. of Internet of Things Eng., Hohai Univ., Changzhou, China
Abstract :
In this paper, two novel algorithms are developed to design sparse linear-phase (LP) FIR filters. Compared to traditional design methods, they can jointly optimize coefficient sparsity and order of an LP FIR filter, so as to achieve a balance between filtering performance and implementation efficiency. The design problem under consideration is formally cast as a regularized l0-norm minimization problem, which is then tackled by two different design algorithms. In the first proposed algorithm, the objective function of the original design problem is replaced by its upper bound, which leads to a weighted l0-norm minimization problem, while in the second one a group of auxiliary variables are introduced such that the original design problem can be equivalently transformed to another weighted l0-norm minimization problem. The iterative-reweighted-least-squares (IRLS) algorithm is employed with appropriate modifications to solve both weighted l0-norm minimization problems. Simulation results show that, compared to traditional approaches, the proposed algorithms can achieve comparable or better design results in terms of both sparsity and effective filter order.
Keywords :
FIR filters; iterative methods; least squares approximations; linear phase filters; minimisation; IRLS algorithm; LP FIR filter design; auxiliary variables; coefficient sparsity; filtering performance; finite impulse response filters; implementation efficiency; iterative-reweighted-least-squares algorithm; joint optimization; objective function; original design problem; regularized-norm minimization problem; sparse linear-phase FIR filter order design; weighted-norm minimization problem; Filter order; iterative-reweighted-least-squares (IRLS); linear phase; quadratic programming (QP); sparse FIR filter; weighted $l_{0}$-norm minimization;
Journal_Title :
Circuits and Systems I: Regular Papers, IEEE Transactions on
DOI :
10.1109/TCSI.2014.2354771