• Corpus ID: 1255006

OSPCV: Off-line Signature Verification using Principal Component Variances

@inproceedings{ArunalathaJ2015OSPCVOS,
  title={OSPCV: Off-line Signature Verification using Principal Component Variances},
  author={S ArunalathaJ. and R PrashanthC and Tejaswi and K. Shaila and K. B. Raja and Dinesh Anvekar and R. VenugopalK. and S. Sitharama Iyengar and Lalit M. Patnaik and S PawanK},
  year={2015}
}
Signature verification system is always the most sought after biometric verification system. Being a behavioral biometric feature which can always be imitated, the researcher faces a challenge in designing such a system, which has to counter intrapersonal and interpersonal variations. The paper presents a comprehensive way of off-line signature verification based on two features namely, the pixel density and the centre of gravity distance. The data processing consists of two parallel processes… 

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