Speaker Recognition
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چکیده
Speaker recognition is basically divided into two-classification: speaker recognition and speaker identification and it is the method of automatically identify who is speaking on the basis of individual information integrated in speech waves. Speaker recognition is widely applicable in use of speaker’s voice to verify their identity and control access to services such as banking by telephone, database access services, voice dialling telephone shopping, information services, voice mail, security control for secret information areas, and remote access to computer AT and T and TI with Sprint have started field tests and actual application of speaker recognition technology; many customers are already being used by Sprint’s Voice Phone Card. Speaker recognition technology is the most potential technology to create new services that will make our every day lives more secured. Another important application of speaker recognition technology is for forensic purposes. Speaker recognition has been seen an appealing research field for the last decades which still yields a number of unsolved problems.
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