Saturday, August 3, 2019
Speaker identification and verification over short distance telephone l
 SPEAKER IDENTIFICATION AND VERIFICATION OVER SHORT  DISTANCE TELEPHONE LINES USING ARTIFICIAL NEURAL  NETWORKS  Ganesh K Venayagamoorthy, Narend Sunderpersadh, and Theophilus N Andrew  gkumar@ieee.org sundern@telkom.co.za theo@wpo.mlsultan.ac.za  Electronic Engineering Department,  M L Sultan Technikon,  P O Box 1334, Durban, South Africa.  ABSTRACT  Crime and corruption have become rampant today  in our society and countless money is lost each year  due to white collar crime, fraud, and embezzlement.  This paper presents a technique of an ongoing work  to combat white-collar crime in telephone  transactions by identifying and verifying speakers  using Artificial Neural Networks (ANNs). Results  are presented to show the potential of this technique.  1. INTRODUCTION  Several countries today are facing rampant crime and  corruption. Countless money is lost each year due to  white collar crime, fraud, and embezzlement. In todayââ¬â¢s  complex economic times, businesses and individuals  are both falling victims to these devastating crimes.  Employees embezzle funds or steal goods from their  employers, then disappear or hide behind legal issues.  Individuals can easily become helpless victims of  identity theft, stock schemes and other scams that rob  them of their money  White collar crime occurs in the gray area where the  criminal law ends and civil law begins. Victims of  white collar crimes are faced with navigating a daunting  legal maze in order to effect some sort of resolution or  recovery. Law enforcement is often too focused on  combating ââ¬Å"street crimeâ⬠ or does not have the expertise  to investigate and prosecute sophisticated fraudulent  acts. Even if criminal prosecution is pursued, a criminal  conviction does not mean that the victims of fraud are  able to recover their losses. They have to rely on th  criminal courts awarding restitution after the conviction  and by then the perpetrator has disposed of or hidde  most of the assets available for recovery. From the civil  law perspective, resolution and recovery can just be a  difficult as pursuing criminal prosecution. Perpetrators  of white collar crime are often difficult to locate and  served with civil process. Once the perpetrators have  been located and served, proof must be provided that  the fraudulent act occurred and recovery/damages are  needed. This usually takes a lengthy legal fight, which  often can cost the victim more money than t...              ...phone speechâ⬠, IEEE  Signal Processing Letters, vol. 2 no. 3 March 1995, pp.  46 - 48.  [2] J.M.Naik, L.P.Netsch, G.R.Doddington, ââ¬Å"Speaker  verification over long distance telephone linesâ⬠,  Proceedings of IEEE International Conference on  Acoustics, Speech, and Signal Processing (ICASSP),  23-26 May 1989, pp. 524 - 527.  [3] A.L.Mcilraith, H.C.Card, ââ¬Å"Birdsong Recognition  Using Backpropagation and Multivariate Statisticsâ⬠,  Proceedings of IEEE Trans on Signal Processing, vol.  45, no. 11, November 1997.  [4] G.K.Venayagamoorthy, V.Moonasar,  K.Sandrasegaran, ââ¬Å"Voice Recognition Using Neural  Networksâ⬠, Proceedings of IEEE South African  Symposium on Communications and Signal Processing  (COMSIG 98), 7-8 September 1998, pp. 29 - 32.  [5] V.Moonasar, G.K.Venayagamoorthy, ââ¬Å"Speaker  identification using a combination of different  parameters as feature inputs to an artificial neural  network classifierâ⬠, accepted for publication in the  Proceedings of IEEE Africon 99 conference, Cape  Town, 29 September ââ¬â 2 October 99.  [6] H.Demuth, M.Beale, MATLAB Neural Network  Toolbox Userââ¬â¢s Guide, The Maths Works Inc., 1996.  [7] T.Kohonen, Self-organizing and associate memory  Spring Verlag, Berlin, third edition, 1989.                       
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