Novel Feature Vector Set Extraction using Spectral Peaks in Autocorrelation Domain
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@Article{JICS-4-131,
author = {Poonam Bansal, Amita Dev, Shail Bala Jain},
title = {Novel Feature Vector Set Extraction using Spectral Peaks in Autocorrelation Domain},
journal = {Journal of Information and Computing Science},
year = {2024},
volume = {4},
number = {2},
pages = {131--141},
abstract = { This paper presents a new feature vector set for noisy speech recognition in autocorrelation
domain. The autocorrelation domain is well known for its pole preserving and noise separation properties. In
this paper we will use the autocorrelation domain as an appropriate candidate for robust feature extraction. In
our approach, extraction of mel frequency cepstral coefficients (MFCC) of the speech signals are proposed
based on novel Differentiated Relative Higher Order Autocorrelation Coefficient Sequence Spectrum
(DRHOASS). In this approach, initially the lower lags of the noisy speech autocorrelation sequence are
discarded and then, the effect of noise is further suppressed using a high pass filter in autocorrelation domain.
Finally, the feature vector set of the speech signal is found using the spectral peaks of the filtered
autocorrelation sequence. We tested our features on the Hindi isolated-word task and found that it led to
noticeable improvements over other autocorrelation-based and differential spetral-based methods.
},
issn = {1746-7659},
doi = {https://doi.org/},
url = {http://global-sci.org/intro/article_detail/jics/22755.html}
}
TY - JOUR
T1 - Novel Feature Vector Set Extraction using Spectral Peaks in Autocorrelation Domain
AU - Poonam Bansal, Amita Dev, Shail Bala Jain
JO - Journal of Information and Computing Science
VL - 2
SP - 131
EP - 141
PY - 2024
DA - 2024/01
SN - 4
DO - http://doi.org/
UR - https://global-sci.org/intro/article_detail/jics/22755.html
KW - Autocorrelation domain, Feature vector set, spectral peaks
AB - This paper presents a new feature vector set for noisy speech recognition in autocorrelation
domain. The autocorrelation domain is well known for its pole preserving and noise separation properties. In
this paper we will use the autocorrelation domain as an appropriate candidate for robust feature extraction. In
our approach, extraction of mel frequency cepstral coefficients (MFCC) of the speech signals are proposed
based on novel Differentiated Relative Higher Order Autocorrelation Coefficient Sequence Spectrum
(DRHOASS). In this approach, initially the lower lags of the noisy speech autocorrelation sequence are
discarded and then, the effect of noise is further suppressed using a high pass filter in autocorrelation domain.
Finally, the feature vector set of the speech signal is found using the spectral peaks of the filtered
autocorrelation sequence. We tested our features on the Hindi isolated-word task and found that it led to
noticeable improvements over other autocorrelation-based and differential spetral-based methods.
Poonam Bansal, Amita Dev, Shail Bala Jain. (2024). Novel Feature Vector Set Extraction using Spectral Peaks in Autocorrelation Domain.
Journal of Information and Computing Science. 4 (2).
131-141.
doi:
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