Matches in SemOpenAlex for { <https://semopenalex.org/work/W4206100981> ?p ?o ?g. }
- W4206100981 abstract "Biometrics is an active area of research because of the increase in need for accurate person identification in numerous applications ranging from entertainment to security. Unimodal and multimodal are the well-known biometric methods. Unimodal biometrics uses one biometric modality of a person for person identification. The performance of an unimodal biometric system is degraded due to certain limitations such as: intra-class variations and nonuniversality. The person identification using more than one biometric modality of a person is multimodal biometrics. This method of identification has gained more interest due to resistance on spoof attacks and more recognition rate. Conventional methods of feature extraction have difficulty in engineering features that are liable to more variations such as illumination, pose and age variations. Feature extraction using convolution neural network (CNN) can overcome these difficulties because large dataset with robust variations can be used for training, where CNN can learn these variations. In this paper, we propose multimodal biometrics at feature level horizontal fusion using face, ear and periocular region biometric modalities and apply deep learning CNN for feature representation and also we propose face, ear and periocular region dataset that are robust to intra-class variations. The evaluation of the system is made by using proposed database. Accuracy, Precision, Recall and [Formula: see text] score are calculated to evaluate the performance of the system and had shown remarkable improvement over existing biometric system." @default.
- W4206100981 created "2022-01-26" @default.
- W4206100981 creator A5007449778 @default.
- W4206100981 creator A5030827764 @default.
- W4206100981 creator A5065743792 @default.
- W4206100981 date "2021-12-31" @default.
- W4206100981 modified "2023-10-18" @default.
- W4206100981 title "Multimodal Biometric Person Authentication Using Face, Ear and Periocular Region Based on Convolution Neural Networks" @default.
- W4206100981 cites W1951319388 @default.
- W4206100981 cites W1965914109 @default.
- W4206100981 cites W1983474530 @default.
- W4206100981 cites W2018953191 @default.
- W4206100981 cites W2019999542 @default.
- W4206100981 cites W2096171208 @default.
- W4206100981 cites W2109717373 @default.
- W4206100981 cites W2152690956 @default.
- W4206100981 cites W2157298821 @default.
- W4206100981 cites W2163808566 @default.
- W4206100981 cites W2169403998 @default.
- W4206100981 cites W2172986903 @default.
- W4206100981 cites W2526403378 @default.
- W4206100981 cites W2560211560 @default.
- W4206100981 cites W2767420072 @default.
- W4206100981 cites W2792027052 @default.
- W4206100981 cites W2799891027 @default.
- W4206100981 cites W2888744770 @default.
- W4206100981 cites W2895694371 @default.
- W4206100981 cites W2898228808 @default.
- W4206100981 cites W2905396542 @default.
- W4206100981 cites W2908400479 @default.
- W4206100981 cites W2963809521 @default.
- W4206100981 cites W2969435227 @default.
- W4206100981 cites W2982562138 @default.
- W4206100981 cites W2993464084 @default.
- W4206100981 cites W2997716588 @default.
- W4206100981 cites W3025926153 @default.
- W4206100981 cites W3042230461 @default.
- W4206100981 cites W3095571733 @default.
- W4206100981 cites W3101824741 @default.
- W4206100981 cites W3101998545 @default.
- W4206100981 cites W4238416234 @default.
- W4206100981 doi "https://doi.org/10.1142/s0219467823500195" @default.
- W4206100981 hasPublicationYear "2021" @default.
- W4206100981 type Work @default.
- W4206100981 citedByCount "0" @default.
- W4206100981 crossrefType "journal-article" @default.
- W4206100981 hasAuthorship W4206100981A5007449778 @default.
- W4206100981 hasAuthorship W4206100981A5030827764 @default.
- W4206100981 hasAuthorship W4206100981A5065743792 @default.
- W4206100981 hasConcept C116834253 @default.
- W4206100981 hasConcept C138885662 @default.
- W4206100981 hasConcept C144024400 @default.
- W4206100981 hasConcept C148417208 @default.
- W4206100981 hasConcept C153180895 @default.
- W4206100981 hasConcept C154945302 @default.
- W4206100981 hasConcept C184297639 @default.
- W4206100981 hasConcept C2776401178 @default.
- W4206100981 hasConcept C2779304628 @default.
- W4206100981 hasConcept C2780226545 @default.
- W4206100981 hasConcept C31510193 @default.
- W4206100981 hasConcept C36289849 @default.
- W4206100981 hasConcept C38652104 @default.
- W4206100981 hasConcept C41008148 @default.
- W4206100981 hasConcept C41895202 @default.
- W4206100981 hasConcept C45347329 @default.
- W4206100981 hasConcept C50644808 @default.
- W4206100981 hasConcept C52622490 @default.
- W4206100981 hasConcept C59822182 @default.
- W4206100981 hasConcept C81363708 @default.
- W4206100981 hasConcept C86803240 @default.
- W4206100981 hasConceptScore W4206100981C116834253 @default.
- W4206100981 hasConceptScore W4206100981C138885662 @default.
- W4206100981 hasConceptScore W4206100981C144024400 @default.
- W4206100981 hasConceptScore W4206100981C148417208 @default.
- W4206100981 hasConceptScore W4206100981C153180895 @default.
- W4206100981 hasConceptScore W4206100981C154945302 @default.
- W4206100981 hasConceptScore W4206100981C184297639 @default.
- W4206100981 hasConceptScore W4206100981C2776401178 @default.
- W4206100981 hasConceptScore W4206100981C2779304628 @default.
- W4206100981 hasConceptScore W4206100981C2780226545 @default.
- W4206100981 hasConceptScore W4206100981C31510193 @default.
- W4206100981 hasConceptScore W4206100981C36289849 @default.
- W4206100981 hasConceptScore W4206100981C38652104 @default.
- W4206100981 hasConceptScore W4206100981C41008148 @default.
- W4206100981 hasConceptScore W4206100981C41895202 @default.
- W4206100981 hasConceptScore W4206100981C45347329 @default.
- W4206100981 hasConceptScore W4206100981C50644808 @default.
- W4206100981 hasConceptScore W4206100981C52622490 @default.
- W4206100981 hasConceptScore W4206100981C59822182 @default.
- W4206100981 hasConceptScore W4206100981C81363708 @default.
- W4206100981 hasConceptScore W4206100981C86803240 @default.
- W4206100981 hasIssue "02" @default.
- W4206100981 hasLocation W42061009811 @default.
- W4206100981 hasOpenAccess W4206100981 @default.
- W4206100981 hasPrimaryLocation W42061009811 @default.
- W4206100981 hasRelatedWork W1524372968 @default.
- W4206100981 hasRelatedWork W1983660090 @default.
- W4206100981 hasRelatedWork W2076845124 @default.
- W4206100981 hasRelatedWork W2123843216 @default.
- W4206100981 hasRelatedWork W2183964146 @default.