Published January 1, 2015 | Version v1
Journal article Open

A Convolutive Bounded Component Analysis Framework for Potentially Nonstationary Independent and/or Dependent Sources

  • 1. Stanford Univ, Dept Elect Engn, Stanford, CA 94305 USA
  • 2. Koc Univ, Elect Elect Engn Dept, TR-34450 Istanbul, Turkey

Description

Bounded Component Analysis (BCA) is a recent framework which enables development of methods for the separation of dependent as well as independent sources from their mixtures. This paper extends a recent geometric BCA approach introduced for the instantaneous mixing problem to the convolutive mixing problem. The paper proposes novel deterministic convolutive BCA frameworks for the blind source extraction and blind source separation of convolutive mixtures of sources which allows the sources to be potentially nonstationary. The global maximizers of the proposed deterministic BCA optimization settings are proved to be perfect separators. The paper also illustrates that the iterative algorithms corresponding to these frameworks are capable of extracting/separating convolutive mixtures of not only independent sources but also dependent (even correlated) sources in both component (space) and sample (time) dimensions through simulations based on a Copula distributed source system. In addition, even when the sources are independent, it is shown that the proposed BCA approach have the potential to provide improvement in separation performance especially for short data records based on the setups involving convolutive mixtures of digital communication sources.

Files

bib-e72fb741-f6e0-4d0b-8fc7-dc3ff14f9c53.txt

Files (203 Bytes)

Name Size Download all
md5:53aac125706ba67eb6306243c861c104
203 Bytes Preview Download