Speaker Recognition System Based on GMM Multivariate Probability Distributions built-in a Digital Watermarking Token
نویسندگان
چکیده
The article describes a speaker recognition system based on continuous speech using GMM multivariate probability distributions. A theoretical model of the system including the extraction of distinctive features and statistical modeling is described. The efficiency of the system implemented in the Linux operating system was determined. The system is designed to support the functionality of the Personal Trusted Terminal PTT in order to uniquely identify a subscriber using the device. Słowa kluczowe: GMM, rozpoznawanie mówcy, PTT, biometria.
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