Fast Dictionary Learning for Sparse Representations of Speech Signals
Fast Dictionary Learning for Sparse Representations of Speech Signals
Article PDF

Keywords

adaptive dictionary
dictionary learning
sparse decomposition
sparse dictionary
speech analysis
speech denoising

How to Cite

Bharathi. (2014). Fast Dictionary Learning for Sparse Representations of Speech Signals. Global Journal of Computer Science and Technology, 14(E8), 37–44. Retrieved from https://gjcst.com/index.php/gjcst/article/view/1251

Abstract

For dictionary-based decompositions of certain types it has been observed that there might be a link between sparsity in the dictionary and sparsity in the decomposition Sparsity in the dictionary has also been associated with the derivation of fast and efficient dictionary learning algorithms Therefore in this paper we present a greedy adaptive dictionary learning algorithm that sets out to find sparse atoms for speech signals The algorithm learns the dictionary atoms on data frames taken from a speech signal It iteratively extracts the data frame with minimum sparsity index and adds this to the dictionary matrix The contribution of this atom to the data frames is then removed and the process is repeated The algorithm is found to yield a sparse signal decomposition supporting the hypothesis of a link between sparsity in the decomposition and dictionary The algorithm is applied to the problem of speech representation and speech denoising and its performance is compared to other existing methods
Article PDF
Creative Commons License

This work is licensed under a Creative Commons Attribution 4.0 International License.

Copyright (c) 2014 Authors and Global Journals Private Limited