尺度不变特征变换
指纹(计算)
计算机科学
匹配(统计)
人工智能
模式识别(心理学)
数学
特征提取
统计
作者
Shreyas Dongre,Shrushti Mehta,Pallavi Raut,Vaishali Kulkarni
标识
DOI:10.1109/cvmi59935.2023.10464460
摘要
User authentication is essential for maintaining the security, privacy, and integrity of systems and data. It ensures that only authorized individuals can access specific resources, applications, or sensitive information, preventing potential data breaches, unauthorized modifications, or malicious activities. Biometric identification, particularly fingerprint recognition, has revolutionized authentication. This research paper proposes combining cutting-edge algorithms such as dHash, SIFT-Harris feature points, and Locality-Sensitive hashes to create a more efficient fingerprint-matching system. It aims to improve matching accuracy, data breach avoidance, robustness, and processing speed in fingerprint recognition systems. The final proposed model works for almost all altered (obliteration, central rotation, and z-cut) images. A total of 55,273 images were tested, giving an accuracy of 0.99.
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