Enhancing Data Protection through an Advanced Biometric Security Framework
DOI:
https://doi.org/10.64764/tqvaag28Abstract
Data privacy has happened as a major concern for both individuals and corporations in this technologically advanced world.
The persistent risk of individuality theft draws attention to the shortcomings of conventional security protocols like encrypted
passwords and verified identification documents. This work offers a novel biometric security model that focuses on
fingerprint identification in particular to solve the escalating cybersecurity challenges. Since each person's fingerprints are
distinct, they have long been a trustworthy means of identifying themselves. Our study promotes the incorporation of
fingerprint recognition into conventional password-based authentication procedures by utilizing its shown accuracy and
effectiveness. Passwords and fingerprint recognition work together to protect sensitive data from theft and misuse by limiting
access to it to authorized people only. The growing use of biometric data is being driven by the pressing need for strong
information security. In addition to talking his dual objectives of user authentication and privacy, this study offers a thorough
examination of biometrics as a viable substitute for conventional techniques. Excellent security against theft, loss, or
unauthorized access is offered by biometric authentication based on a person's physical and behavioural traits. gives a
thorough rundown and offers information about its advantages and disadvantages. By pointing out gaps and offering ideas
for future research directions, this work supports continuing efforts to fix weaknesses in present authentication methods. In
the digital age, the suggested biometric security approach is a significant step in improving data security and thwarting
changing cyber threats.
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