Skip to main content
Signal ProcessingVolume 37, Issue 2, May 1994, Pages 189-201

Robust non-recursive AR speech analysis(Article)

  Save all to author list
  • aInstitute of Applied Mathematics and Electronics, Kneza Miloša 37, 11000 Belgrade
  • bFaculty of Electrical Engineering, University of Belgrade, Bulevar Revolucije 73, 11000 Belgrade

Abstract

In this paper a robust non-recursive algorithm for estimating the linear prediction (LP) parameters of autoregressive (AR) speech signal model is proposed. Starting from Huber's robust M-estimation procedure, minimizing the sum of appropriately weighted residuals, a two-step robust LP procedure (RBLP) is derived. In the first step the Huber's convex cost function is selected to give more weights to the bulk of smaller residuals, while down-weighting the small portion of large residuals, and the Newton-type algorithm is used to minimize the adopted criterion. The proposed algorithm takes into account the non-Gaussian nature of the excitation for voiced speech, being characterized by heavier tails of the underlying distribution, which generates high-intensity signal realizations named outliers. The obtained estimates are used as a new start in the weighted least-squares procedure, based on a redescending function of the prediction residuals, which has to cut off the outliers. The experiments on both synthesized and natural speech have shown that the proposed two-step RBLP gives more efficient (less variance) and less biased estimates than the conventional LP algorithms, and a one-step RBLP based on a convex cost function. © 1994.

Author keywords

Parameter estimationPredictionRobustnessSpeech analysisTime series

Indexed keywords

Engineering controlled terms:Computation theoryLeast squares approximationsSignal processingSpeech recognitionWaveform analysis
Engineering uncontrolled terms:Convex cost functionLinear prediction parametersNewton type algorithmNon-recursive algorithmVariance
Engineering main heading:Speech analysis
  • ISSN: 01651684
  • CODEN: SPROD
  • Source Type: Journal
  • Original language: English
  • DOI: 10.1016/0165-1684(94)90102-3
  • Document Type: Article

  Kovačević, B.D.; Faculty of Electrical Engineering, University of Belgrade, Bulevar Revolucije 73,
© Copyright 2014 Elsevier B.V., All rights reserved.

Cited by 20 documents

Kovačević, B. , Milosavljević, M.M. , Veinović, M.
Robust digital processing of speech signals
(2017) Robust Digital Processing of Speech Signals
Kovačević, B. , Banjac, Z. , Kovačević, I.K.
Robust adaptive filtering using recursive weighted least squares with combined scale and variable forgetting factors
(2016) Eurasip Journal on Advances in Signal Processing
Marković, M.
Quadratic classifier with sliding training data set in robust recursive identification of nonstationary ar model of speech
(2015) European Signal Processing Conference
View details of all 20 citations

SciVal Topic Prominence

Topic:
Prominence percentile: