This article describes a modified technique for enhancing noisy speech to improve automatic speech recognition (ASR) performance. The proposed approach improves the widely used spectral subtraction which inherently suffers from the associated musical noise effects. Through a psychoacoustic masking and critical band variance normalization technique, the artifacts produced by spectral subtraction are minimized for improving the ASR accuracy. The popular advanced ETSI-2 front end is tested for comparison purposes. The performed speech recognition evaluations on the noisy standard AURORA-2 tasks show enhanced performance for all noise conditions
An optimal approach for enhancing a speech signal degraded by uncorrelated stationary additive noise...
Abstract—There are many situations where speech is affected by different kind of acoustic noise. We ...
Automatic speech recognition (ASR) is a technology that allows a computer and mobile device to recog...
One of the biggest obstacles that hinders the widespread use of automatic speech recognition technol...
A new approach for speech feature extraction in automatic speech recognition (ASR) is proposed in th...
The goal of this work is to improve automatic speech recognition (ASR) performance in very noisy and...
One of the biggest obstacles that hinder the widespread use of automatic speech recognition technolo...
This paper proposed a spectral subtraction based speech enhancement algorithm that improves computer...
One of the biggest obstacles that hinder the widespread use of automatic speech recognition technolo...
Traditional noise reduction techniques have the drawback of generating an annoying musical noise. A ...
This paper describes a new speech enhancement approach using perceptually based noise reduction. The...
[[abstract]]Speech noise reduction is a very important research field with applications in many area...
With the recent push of Automatic Speech Recognition (ASR) capabilities to mobile devices, the user'...
Feature computation models for automatic speech recognition (ASR) systems have long been modeled on ...
We propose a novel framework for noise robust automatic speech recognition (ASR) based on cochlear i...
An optimal approach for enhancing a speech signal degraded by uncorrelated stationary additive noise...
Abstract—There are many situations where speech is affected by different kind of acoustic noise. We ...
Automatic speech recognition (ASR) is a technology that allows a computer and mobile device to recog...
One of the biggest obstacles that hinders the widespread use of automatic speech recognition technol...
A new approach for speech feature extraction in automatic speech recognition (ASR) is proposed in th...
The goal of this work is to improve automatic speech recognition (ASR) performance in very noisy and...
One of the biggest obstacles that hinder the widespread use of automatic speech recognition technolo...
This paper proposed a spectral subtraction based speech enhancement algorithm that improves computer...
One of the biggest obstacles that hinder the widespread use of automatic speech recognition technolo...
Traditional noise reduction techniques have the drawback of generating an annoying musical noise. A ...
This paper describes a new speech enhancement approach using perceptually based noise reduction. The...
[[abstract]]Speech noise reduction is a very important research field with applications in many area...
With the recent push of Automatic Speech Recognition (ASR) capabilities to mobile devices, the user'...
Feature computation models for automatic speech recognition (ASR) systems have long been modeled on ...
We propose a novel framework for noise robust automatic speech recognition (ASR) based on cochlear i...
An optimal approach for enhancing a speech signal degraded by uncorrelated stationary additive noise...
Abstract—There are many situations where speech is affected by different kind of acoustic noise. We ...
Automatic speech recognition (ASR) is a technology that allows a computer and mobile device to recog...