In this article, we compare aural and automatic speaker recognition in the context of forensic analyses, using a Bayesian framework for the interpretation of evidence. We use perceptual tests performed by non-experts and compare their performance with that of an automatic speaker recognition system. These experiments are performed with 90 phonetically untrained subjects. Several forensic cases were simulated, using the Polyphone IPSC-02 database, varying in linguistic content and technical conditions of recording. We estimate the strength of evidence for both humans and the baseline automatic system, calculating likelihood ratios using perceptual scores for humans and log-likelihood scores for the automatic system. A methodology analogous t...
International audienceIt is common to see voice recordings being presented as a forensic trace in co...
Individuals in professions such as forensic science and criminal investigation are greatly intereste...
Proceedings of Interspeech 2009, Brighton (United Kingdom)In this paper we compare forensic speaker ...
The goal of this paper is to establish a robust methodology for forensic automatic speaker recogniti...
The so-called ‘mismatch’ is a factor which experts in the forensic voice comparison field encounter ...
In this paper, we will show how any speaker recognition system can be adapted to provide its results...
Current Automatic Speaker Recognition (ASR) System has emerged as an important medium of confirmatio...
The aim of this paper is to reduce the effect of mismatch in recording conditions due to the transmi...
The aim of forensic speaker recognition is to establish links between individuals and criminal activ...
This thesis advances understanding of the forensic value of the automatic speech parameters by addre...
In this contribution, the Bayesian framework for interpretation of evidence when applied to forensic...
This thesis examines the influence of acoustic variability on automatic speaker recognition systems ...
Important aspects of Technical Forensic Speaker Recognition, particularly those associated with evid...
There is increasing pressure for forensic science to evaluate evidence in a logically correct manner...
This chapter describes a number of signal-processing and statistical-modeling techniques that are co...
International audienceIt is common to see voice recordings being presented as a forensic trace in co...
Individuals in professions such as forensic science and criminal investigation are greatly intereste...
Proceedings of Interspeech 2009, Brighton (United Kingdom)In this paper we compare forensic speaker ...
The goal of this paper is to establish a robust methodology for forensic automatic speaker recogniti...
The so-called ‘mismatch’ is a factor which experts in the forensic voice comparison field encounter ...
In this paper, we will show how any speaker recognition system can be adapted to provide its results...
Current Automatic Speaker Recognition (ASR) System has emerged as an important medium of confirmatio...
The aim of this paper is to reduce the effect of mismatch in recording conditions due to the transmi...
The aim of forensic speaker recognition is to establish links between individuals and criminal activ...
This thesis advances understanding of the forensic value of the automatic speech parameters by addre...
In this contribution, the Bayesian framework for interpretation of evidence when applied to forensic...
This thesis examines the influence of acoustic variability on automatic speaker recognition systems ...
Important aspects of Technical Forensic Speaker Recognition, particularly those associated with evid...
There is increasing pressure for forensic science to evaluate evidence in a logically correct manner...
This chapter describes a number of signal-processing and statistical-modeling techniques that are co...
International audienceIt is common to see voice recordings being presented as a forensic trace in co...
Individuals in professions such as forensic science and criminal investigation are greatly intereste...
Proceedings of Interspeech 2009, Brighton (United Kingdom)In this paper we compare forensic speaker ...