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Speaker recognition is the process of automatically recognizing who is speaking on the basis of individual information included in speech waves. This technique makes it possible to use the speaker's voice to verify their identity and control access to services such as voice dialing, banking by telephone, telephone shopping, database access services, information services, voice mail, security control for confidential information areas, and remote access to computers.

Speaker identity is correlated with the physiological and behavioral characteristics of the speaker. These characteristics exist both in the spectral envelope (vocal tract characteristics) and in the supra-segmental features (voice source characteristics and dynamic features spanning several segments).

The most common short-term spectral measurements currently used are Linear Predictive Coding (LPC)-derived cepstral coefficients and their regression coefficients. A spectral envelope reconstructed from a truncated set of cepstral coefficients is much smoother than one reconstructed from LPC coefficients. Therefore it provides a stabler representation from one repetition to another of a particular speaker's utterances. As for the regression coefficients, typically the first- and second-order coefficients are extracted at every frame period to represent the spectral dynamics. These coefficients are derivatives of the time functions of the cepstral coefficients and are respectively called the delta- and delta-delta-cepstral coefficients.

Index Terms: speaker, recognition, verification, sound, words.

 

 

 

 

Figure 1. Microphone



A simple and effective source code for Speaker Recognition. This code is based on Amin Koohi's excellent submission available here and improves results using an advanced metric for distance computation. In this way a better recognition rate is achieved. On the initial dataset (8 speakers) we obtain a recognition rate of 100% (the previuos one was 87.5%). We can achieve analogous results (100% recognition rate) for a larger dataset (11 speakers).

Demo code (protected P-files) available for performance evaluation. Matlab Signal Processing Toolbox is required.

Release
Date
Major features
1.0

2005.12.07



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Speaker Recognition System - Release 1.0 - Click here for your donation. In order to obtain the source code you have to pay a little sum of money: 18 EUROS (less than 26 U.S. Dollars).

Once you have done this, please email us luigi.rosa@tiscali.it
As soon as possible (in a few days) you will receive our new release of Speaker Recognition System.

Alternatively, you can bestow using our banking coordinates:
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Luigi Rosa
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Via Pozzo Strada 5 10139 Torino Italy
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Poste Italiane
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IT-50-V-07601-03600-000058177916
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The authors have no relationship or partnership with The Mathworks. All the code provided is written in Matlab language (M-files and/or M-functions), with no dll or other protected parts of code (P-files or executables). The code was developed with Matlab 14 SP1. Matlab Signal Processing Toolbox is required. The code provided has to be considered "as is" and it is without any kind of warranty. The authors deny any kind of warranty concerning the code as well as any kind of responsibility for problems and damages which may be caused by the use of the code itself including all parts of the source code.

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