This paper presents a robust voice activity detector (VAD) based on hidden Markov models (HMM) to improve speech recognition systems in stationary and non-stationary noise environments: inside motor vehicles (like cars or planes) or inside buildings close to high traffic places (like in a control tower for air traffic control (ATC)). In these environments, there is a high stationary noise level caused by vehicle motors and additionally, there could be people speaking at certain distance from the main speaker producing non-stationary noise. The VAD presented in this paper is characterized by a new front-end and a noise level adaptation process that increases significantly the VAD robustness for different signal to noise ratios (SNRs). The fe...
The performance of existing speech recognition systems degrades rapidly in the presence of backgroun...
Abstract—Currently, there are technology barriers inhibiting speech processing systems that work in ...
EUROSPEECH2003: 8th European Conference on Speech Communication and Technology, September 1-4, 2003...
Voice activity detection (VAD) is a fundamental task in various speech-related applications, such as...
Performance of automatic speech recognition relies on a vast amount of training speech data mostly r...
This paper proposes a voice activity detection (VAD) method based on time and spectral domain featur...
This paper describes a study of noise-robust voice activity detection (VAD) utilizing the periodicit...
The emerging applications of wireless speech communication are demanding increasing levels of perfor...
The well known fact is that the performance of the Speech Recognition System degrades drastically in...
Voice activity detection (VAD) is a fundamental task in various speech-related appli-cations, such a...
515-522This study evaluates performance of objective measures in terms of predicting quality of nois...
Abstract. A robust and effective voice activity detection (VAD) al-gorithm is proposed for improving...
This paper deals with the analysis of Automatic Speech Recognition (ASR) suitable for usage within n...
Preprint del artículo públicado online el 31 de mayo 2018Voice activity detection (VAD) is an essent...
A microphone for personal communication is placed inside the external auditory canal of a user. A pa...
The performance of existing speech recognition systems degrades rapidly in the presence of backgroun...
Abstract—Currently, there are technology barriers inhibiting speech processing systems that work in ...
EUROSPEECH2003: 8th European Conference on Speech Communication and Technology, September 1-4, 2003...
Voice activity detection (VAD) is a fundamental task in various speech-related applications, such as...
Performance of automatic speech recognition relies on a vast amount of training speech data mostly r...
This paper proposes a voice activity detection (VAD) method based on time and spectral domain featur...
This paper describes a study of noise-robust voice activity detection (VAD) utilizing the periodicit...
The emerging applications of wireless speech communication are demanding increasing levels of perfor...
The well known fact is that the performance of the Speech Recognition System degrades drastically in...
Voice activity detection (VAD) is a fundamental task in various speech-related appli-cations, such a...
515-522This study evaluates performance of objective measures in terms of predicting quality of nois...
Abstract. A robust and effective voice activity detection (VAD) al-gorithm is proposed for improving...
This paper deals with the analysis of Automatic Speech Recognition (ASR) suitable for usage within n...
Preprint del artículo públicado online el 31 de mayo 2018Voice activity detection (VAD) is an essent...
A microphone for personal communication is placed inside the external auditory canal of a user. A pa...
The performance of existing speech recognition systems degrades rapidly in the presence of backgroun...
Abstract—Currently, there are technology barriers inhibiting speech processing systems that work in ...
EUROSPEECH2003: 8th European Conference on Speech Communication and Technology, September 1-4, 2003...