Abstract—Automatic speaker recognition has become a well-established technique for forensic applications. Since ambient recordings in such applications are obtained with hidden microphones far away from the sound sources, the performance of the speaker recognition can be severely degraded. In this paper, we propose an array signal processing method to compensate for these disturbances by spatially separating the present individual speakers and noise using convolutive Independent Component Analysis and applying a noise-suppression method based on spectral subtraction to the separated sound signals. A speaker recognition scheme based on Mel-Frequency Cepstral Coefficients and Gaussian Mixture Models is then applied to the separated and noise-...
This paper presents a method of separating speech and interference signal from their single mixture....
When a number of speakers are simultaneously active, for example in meetings or noisy public places,...
Speech recognition performance degrades significantly in distant-talking environments, where the sp...
The performance of forensic speaker recognition systems degrades significantly in the presence of en...
This paper describes the speaker recognition problem regarding to the complex surveillance system. ...
Forensic speaker verification performance reduces significantly under high levels of noise and rever...
The performance of forensic speaker verification degrades severely in the presence of high levels of...
Forensic speaker verification systems show severe performance degradation in the presence of noise w...
In this paper, we propose a novel algorithm for the separation of convolutive speech mixtures using ...
Reducing acoustic noise in audio recordings is an ongoing problem that plagues many applications. Th...
Motivated by the application of speaker recognition in forensic area, this paper presents a study on...
Extraction of a target speech signal from the convolutive mixture of multiple sources observed in a ...
In this paper we present a new method of signal processing for robust speech recognition using multi...
Extraction of a target speech signal from the convolutive mixture of multiple sources observed in a ...
Speech enhancement algorithms play an essential role in forensic applications, and enhanced speech s...
This paper presents a method of separating speech and interference signal from their single mixture....
When a number of speakers are simultaneously active, for example in meetings or noisy public places,...
Speech recognition performance degrades significantly in distant-talking environments, where the sp...
The performance of forensic speaker recognition systems degrades significantly in the presence of en...
This paper describes the speaker recognition problem regarding to the complex surveillance system. ...
Forensic speaker verification performance reduces significantly under high levels of noise and rever...
The performance of forensic speaker verification degrades severely in the presence of high levels of...
Forensic speaker verification systems show severe performance degradation in the presence of noise w...
In this paper, we propose a novel algorithm for the separation of convolutive speech mixtures using ...
Reducing acoustic noise in audio recordings is an ongoing problem that plagues many applications. Th...
Motivated by the application of speaker recognition in forensic area, this paper presents a study on...
Extraction of a target speech signal from the convolutive mixture of multiple sources observed in a ...
In this paper we present a new method of signal processing for robust speech recognition using multi...
Extraction of a target speech signal from the convolutive mixture of multiple sources observed in a ...
Speech enhancement algorithms play an essential role in forensic applications, and enhanced speech s...
This paper presents a method of separating speech and interference signal from their single mixture....
When a number of speakers are simultaneously active, for example in meetings or noisy public places,...
Speech recognition performance degrades significantly in distant-talking environments, where the sp...