Biometric Recognition System based on Analysis and Classification of Physiological Signals
| dc.contributor.author | Benabdallah,Amel | |
| dc.date.accessioned | 2026-04-23T10:09:38Z | |
| dc.date.available | 2026-04-23T10:09:38Z | |
| dc.date.issued | 2025-12-11 | |
| dc.description.abstract | This dissertationexplorestheinnovativedomainofbiometricrecognitionsys- tems, focusingontheanalysisandclassificationofphysiologicalsignalsasamethod to improvepersonalidentificationandauthenticationprocesses.Thediscussion delvesintovariousphysiologicalsignalsfusionintoourdevelopedbiometricframe- work,suchaselectrocardiography(ECG),ImpedanceCardiography(ICG)and ContinuousBloodPressure(BP)signalshighlightingtheirsignificanceinbiomet- ric applications.ByemployingadvancedmachinelearningtechniquesandANN, signal processingalgorithmsandablationstudy,thecurrentstudydemonstrates howthesesignalsprovideuniquecharacteristicpatterntoeachindividualtailored with multitasksoftheproposedbiometricsystem.Furthermore,thisdissertation addresses thechallengesfacedinreal-worldimplementations,includingdatapri- vacyconcerns,andtheneedforrobustclassificationmodels.Resultsindicatethe Fine Gaussian-SVMmodelachievedan88.14%accuracyduringtraining,witha recall of95.09%,precisionof94.33%,andaKappacoefficientof87.7%.Inthe test set,FG-SVMdemonstrated93.33%accuracy,balancedrecallandprecisionof 93.33%, andaKappacoefficientof92.9%.TheBi-layeredANNmodelexhibited superiortrainingperformance,attaining93.3%accuracy,94.56%recall,93.17% precision, andaKappacoefficientof93.1%.Notably,inthetestset,Bi-layered ANN achievedperfectaccuracy,recall,precision,andKappacoefficientof100%. The presentedfindingsenrichthedataset,aimtocontributetothegrowingbody of knowledgeinbiometrictechnology,showcasingthepotentialofbloodpressure signal analysisasacornerstonefornext-generationbiometricrecognitionsystems. This researchoffersvaluableinsightsforacademicandhealthcaresectorswhich enhance operationalefficiencybyimprovingpatientsatisfactionthroughmitigate misidentificationofpatients,whilealsominimizingcosts,medicalerrors,andpre- ventingfraudofstakeholdersinterestedinthefutureofbiometricauthentication solutions. | |
| dc.identifier.uri | https://dspace.univ-tlemcen.dz/handle/112/26036 | |
| dc.language.iso | en | |
| dc.publisher | University of Tlemcen | en_US |
| dc.relation.ispartofseries | N°inventaire 2852 | |
| dc.subject | Biometrics | |
| dc.subject | Physiologicalsignals | |
| dc.subject | identification | |
| dc.subject | authentication | |
| dc.subject | ECG | |
| dc.subject | ICG | |
| dc.subject | CBP | |
| dc.subject | classification | |
| dc.subject | SVM | |
| dc.subject | ANN | |
| dc.title | Biometric Recognition System based on Analysis and Classification of Physiological Signals | |
| dc.type | Thesis |
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