Publication detail

Optimizing dictionary learning parameters for solving Audio Inpainting problem

MACH, V. OZDOBINSKI, R.

Original Title

Optimizing dictionary learning parameters for solving Audio Inpainting problem

Type

journal article - other

Language

English

Original Abstract

Recovering missing or distorted audio signal samples has been recently improved by solving an Audio Inpainting problem. This paper aims to connect this problem with K-SVD dictionary learning to improve reconstruction error for missing signal insertion problem. Our aim is to adapt an initial dictionary to the reliable signal to be more accurate in missing samples estimation. This approach is based on sparse signals reconstruction and optimization problem. In the paper two staple algorithms, connection between them and emerging problems are described. We tried to find optimal parameters for efficient dictionary learning.

Keywords

Audio Inpainting, Dictionary Learning, K-SVD, Orthogonal Matching Pursuit, Signal reconstruction, Sparse Representations

Authors

MACH, V.; OZDOBINSKI, R.

RIV year

2013

Released

7. 1. 2013

Location

Brno

ISBN

1805-5443

Periodical

International Journal of Advances in Telecommunications, Electrotechnics, Signals and Systems

Year of study

2

Number

1

State

Czech Republic

Pages from

40

Pages to

45

Pages count

6

URL

BibTex

@article{BUT96562,
  author="Václav {Mach} and Roman {Ozdobinski}",
  title="Optimizing dictionary learning parameters for solving Audio Inpainting problem",
  journal="International Journal of Advances in Telecommunications, Electrotechnics, Signals and Systems",
  year="2013",
  volume="2",
  number="1",
  pages="40--45",
  issn="1805-5443",
  url="http://www.ijates.org/index.php/ijates/article/view/34/32"
}