Litcius/Paper detail

Enhanced fingerprint classification through modified PCA with SVD and invariant moments

Ala Balti, Abdelaziz Hamdi, Sabeur Abid, Mohamed Moncef Ben Khelifa, Mounir Sayadi

2024Frontiers in Artificial Intelligence9 citationsDOIOpen Access PDF

Abstract

This research introduces a novel MOMENTS-SVD vector for fingerprint identification, combining invariant moments and SVD (Singular Value Decomposition), enhanced by a modified PCA (Principal Component Analysis). Our method extracts unique fingerprint features using SVD and invariant moments, followed by classification with Euclidean distance and neural networks. The MOMENTS-SVD vector reduces computational complexity by outperforming current models. Using the Equal Error Rate (EER) and ROC curve, a comparative study across databases (CASIA V5, FVC 2002, 2004, 2006) assesses our method against ResNet, VGG19, Neuro Fuzzy, DCT Features, and Invariant Moments, proving enhanced accuracy and robustness.

Topics & Concepts

Singular value decompositionPattern recognition (psychology)Artificial intelligencePrincipal component analysisEuclidean distanceInvariant (physics)Singular valueRobustness (evolution)MathematicsComputer scienceEigenvalues and eigenvectorsPhysicsGeneBiochemistryChemistryMathematical physicsQuantum mechanicsBiometric Identification and SecurityFace and Expression RecognitionForensic Fingerprint Detection Methods