Repository logo
Collections
Browse
Statistics
  • English
  • हिंदी
Log In
New user? Click here to register.Have you forgotten your password?
  1. Home
  2. Publications
  3. Journal Article
  4. A novel approach to remove outliers for parallel voice conversion

Publication:
A novel approach to remove outliers for parallel voice conversion

Date

01-11-2019

Authors

Shah, Nirmesh J
Patil, Hemant

Journal Title

Journal ISSN

Volume Title

Publisher

Elsevier

Research Projects

Organizational Units

Journal Issue

Abstract

Alignment is a key step before learning a�mapping function�between a source and a target speaker�s�spectral features�in various state-of-the-art parallel data Voice Conversion (VC) techniques. After alignment, some corresponding pairs are still inconsistent with the rest of the data and are considered outliers. These outliers shift the parameters of the mapping function from their true value and hence, negatively affect the learning of mapping function during the training phase of the VC task. To the best of the authors� knowledge, the effect of outliers (and hence, their removal) on quality of the converted voice has not been much explored in the VC literature. Recent research has shown the effectiveness of the�outlier removal�as a pre-processing step in the VC. In this paper, we extend this study with a detailed theory and analysis. The proposed method uses a score distance that is estimated using Robust�Principal Component�Analysis (ROBPCA) to detect the outliers. In particular, the outliers are determined using a fixed cut-off on the score distances, based on the degrees of freedom in a chi-squared distribution, which is speaker-pair independent. The fixed cut-off is due to the assumption that the score distances follow the normal (i.e., Gaussian) distribution. However, this is a�weak�statistical assumption even in the cases where quite many samples are available. Hence, in this paper, we propose to explore speaker-pair dependent cut-offs to detect the outliers. In addition, we have presented our results on two state-of-the-art databases, namely, CMU-ARCTIC and Voice Conversion Challenge (VCC) 2016 by developing various state-of-the-art methods in the VC. In particular, we have presented the effectiveness of the outlier removal on�Gaussian Mixture Model�(GMM),�Artificial Neural Network�(ANN), and�Deep Neural Network�(DNN)-based VC techniques. Furthermore, we have presented subjective and objective evaluations using a 95% confidence interval for the statistical significance of the tests. We obtained an average 0.56% relative reduction in Mel�Cepstral�Distortion (MCD) with the proposed outlier removal approach as a pre-processing step. In particular, with the proposed speaker-pair dependent cut-off, we have observed relative improvement of 12.24% and 30.51% in the speech quality, and 39.7% and 4.27% absolute improvement in the speaker similarity for the CMU-ARCTIC and the VCC 2016, respectively.

Description

Keywords

Citation

Nirmesh J. Shah, and Patil, Hemant A, "A novel approach to remove outliers for parallel voice conversion," Computer Speech & Language, vol. 58, Nov. 2019, pp. 127-152. doi: 10.1016/j.csl.2019.03.009

URI

https://ir.daiict.ac.in/handle/dau.ir/1548

Collections

Journal Article

Endorsement

Review

Supplemented By

Referenced By

Full item page

Research Impact

Metrics powered by PlumX, Altmetric and Dimensions

 
Quick Links
  • Home
  • Search
  • Research Overview
  • About
Contact

DAU, Gandhinagar, India

library@dau.ac.in

+91 0796-8261-578

Follow Us

© 2025 Dhirubhai Ambani University
Designed by Library Team