Sitemap  |  Contact  |  Home  |  中文  |  CAS  |  Director’s Email
International Cooperation
Education & Training
Societies & Publications
Chinese Journal of Acoustics
 
 
  Location:Home>News>Events
Prof. Xiao-Ping Zhang from the Ryerson University (Canada) Introduced“A New Direction-of-arrival Estimation Method”
Author:
ArticleSource:
Update time: 2013/01/05
Viewed:
Close
Text Size: A A A
Print

 

Invited by the Communication Acoustics Laboratory of IACAS, Prof. Xiao-Ping Zhang from the Ryerson University, Canada made a lecture titled “A New Direction-of-arrival Estimation Method Based on the Regularized Sparse Variable Projection Optimization” on Dec. 26 at Conference Room 218 of Dezhao South Building.

In Prof. Xiao-Ping Zhang’s lecture, he introduced a new low computational complexity direction-of-arrival (DOA) estimation method based on the regularized sparse variable projection (SVP) optimization.

The new method, i.e. SVP-lp algorithm, estimated a sparse indicative vector (SIV) that indicated the DOA from each visual source corresponding to DOA sampling space.

 Problem Formulation

Different from existing sparse signal representation (SSR) methods for the DOA estimation based on joint-sparse signal representation (JSSR) to reconstruct signal sources themselves, the new SVP-lp method simplified the JSSR problem as a single sparse signal representation (SSSR) problem by reconstructing a SIV instead of all signal sources. The SVP function was regularized by lp<1 norm.

SVP-lp algorithm

Then Zhang formulated the SVP optimization as an unconstrained optimization problem, which could be solved iteratively. It was proved that the new SVP optimization algorithm satisfied the local convergence property and the convergence rate was linear.

The experimental results exhibited that the new method had higher accuracy and much lower complexity compared to existing SSR algorithms and traditional subspace based methods.

 
Copyright © 1996 - 2020 Institute of Acoustics, Chinese Academy of Sciences
No. 21 North 4th Ring Road, Haidian District, 100190 Beijing, China
E-mail: ioa@mail.ioa.ac.cn