Robust Harmonic Retrieval via Block Successive Upper-Bound Minimization
DOI:10.1109/TSP.2018.2875394
期刊:IEEE Transactions on Signal Processing
出版年份:2018
更新时间:2025-09-23 15:21:21
摘要:
Harmonic retrieval (HR) is a problem of significance with numerous applications. Many existing algorithms are explicitly or implicitly developed under Gaussian noise assumption, which, however, are not robust against non-Gaussian noise such as impulsive noise or outliers. In this paper, by employing the (cid:2)p-fitting criterion and block successive upper-bound minimization (BSUM) technique, a variant of the classical RELAX algorithm named as BSUM-RELAX is devised for robust HR. It is revealed that the BSUM-RELAX successively performs alternating optimization along coordinate directions, i.e., it updates one harmonic by fixing the other (K ? 1) components, such that the whole problem is split into K single-tone HR problems, which are then solved by creating a surrogate function that majorizes the objective function of each subproblem. To further refine the frequency component, the Newton’s method that takes linear complexity O(N ) is derived for updating the frequency estimates. We prove that under the single-tone case, BSUM-RELAX converges to a Karush-Kuhn-Tucker point. Furthermore, the BSUM-RELAX is extended to the multidimensional HR case. Numerical results show that the proposed algorithm outperforms the state-of-the-art methods in heavy-tailed noise scenarios.
作者:
Cheng Qian,Yunmei Shi,Lei Huang,Hing Cheung So