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Finger Vein Identification Based on Large Kernel Convolution and Attention Mechanism
by
Gong, Yufei
, Li, Meihui
, Zheng, Zhaohui
in
Accuracy
/ Algorithms
/ attention mechanism
/ Biometric Identification
/ Biometry
/ CNN
/ Computational linguistics
/ Datasets
/ Deep learning
/ dual-channel
/ Equipment and supplies
/ Extremities
/ finger vein identification
/ Fourier transforms
/ Identification
/ Identification systems
/ Image Processing, Computer-Assisted
/ Information management
/ Language processing
/ large kernel
/ Natural language interfaces
/ Neural networks
/ Problem Solving
/ Technology
/ Veins & arteries
/ Veins - diagnostic imaging
2024
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Finger Vein Identification Based on Large Kernel Convolution and Attention Mechanism
by
Gong, Yufei
, Li, Meihui
, Zheng, Zhaohui
in
Accuracy
/ Algorithms
/ attention mechanism
/ Biometric Identification
/ Biometry
/ CNN
/ Computational linguistics
/ Datasets
/ Deep learning
/ dual-channel
/ Equipment and supplies
/ Extremities
/ finger vein identification
/ Fourier transforms
/ Identification
/ Identification systems
/ Image Processing, Computer-Assisted
/ Information management
/ Language processing
/ large kernel
/ Natural language interfaces
/ Neural networks
/ Problem Solving
/ Technology
/ Veins & arteries
/ Veins - diagnostic imaging
2024
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Finger Vein Identification Based on Large Kernel Convolution and Attention Mechanism
by
Gong, Yufei
, Li, Meihui
, Zheng, Zhaohui
in
Accuracy
/ Algorithms
/ attention mechanism
/ Biometric Identification
/ Biometry
/ CNN
/ Computational linguistics
/ Datasets
/ Deep learning
/ dual-channel
/ Equipment and supplies
/ Extremities
/ finger vein identification
/ Fourier transforms
/ Identification
/ Identification systems
/ Image Processing, Computer-Assisted
/ Information management
/ Language processing
/ large kernel
/ Natural language interfaces
/ Neural networks
/ Problem Solving
/ Technology
/ Veins & arteries
/ Veins - diagnostic imaging
2024
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Finger Vein Identification Based on Large Kernel Convolution and Attention Mechanism
Journal Article
Finger Vein Identification Based on Large Kernel Convolution and Attention Mechanism
2024
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Overview
FV (finger vein) identification is a biometric identification technology that extracts the features of FV images for identity authentication. To address the limitations of CNN-based FV identification, particularly the challenge of small receptive fields and difficulty in capturing long-range dependencies, an FV identification method named Let-Net (large kernel and attention mechanism network) was introduced, which combines local and global information. Firstly, Let-Net employs large kernels to capture a broader spectrum of spatial contextual information, utilizing deep convolution in conjunction with residual connections to curtail the volume of model parameters. Subsequently, an integrated attention mechanism is applied to augment information flow within the channel and spatial dimensions, effectively modeling global information for the extraction of crucial FV features. The experimental results on nine public datasets show that Let-Net has excellent identification performance, and the EER and accuracy rate on the FV_USM dataset can reach 0.04% and 99.77%. The parameter number and FLOPs of Let-Net are only 0.89M and 0.25G, which means that the time cost of training and reasoning of the model is low, and it is easier to deploy and integrate into various applications.
Publisher
MDPI AG,MDPI
Subject
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