2018
DOI: 10.1007/s12046-018-0967-y
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GwPeSOA-based MSVNN: the multimodal biometric system for futuristic security applications

Abstract: Biometric systems have gained considerable significance as they are highly employed in the security applications. Achieving human recognition is easier and cheaper and the single modality employed for the recognition faces a lot of challenges due to the environmental factors. Thus, the paper proposes a multimodal recognition system based on the Multi-Support Vector Neural Network (MSVNN). The algorithm proposed is the Glowworm Penguin Search Optimization Algorithm (GwPeSOA), which is a modification of the Glow… Show more

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Cited by 4 publications
(1 citation statement)
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“…The extracted ROI from the finger vein image and hand vein image is specified as R i and A J , respectively. After the process of extracting the exact region, the features associated with the vein patterns are extracted by applying the BiComp masking process 33 . BiComp masking is the texture descriptor that generates the image with the same dimension as that of the original image.…”
Section: Proposed Elephant Deer Hunting Optimization‐based Hybrid Fusion Modelmentioning
confidence: 99%
“…The extracted ROI from the finger vein image and hand vein image is specified as R i and A J , respectively. After the process of extracting the exact region, the features associated with the vein patterns are extracted by applying the BiComp masking process 33 . BiComp masking is the texture descriptor that generates the image with the same dimension as that of the original image.…”
Section: Proposed Elephant Deer Hunting Optimization‐based Hybrid Fusion Modelmentioning
confidence: 99%