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Computer Vision in Contactless Biometric Systems
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Contactless biometric systems have increased ever since the corona pandemic outbreak. The two main contactless biometric systems are facial recognition and gait patterns recognition. The authors in the previous work [11] have built hybrid architecture AccessNet. It involves combination of three systems: facial recognition, facial anti-spoofing, and gait recognition. This work involves deploying the hybrid architecture and deploying two individual systems such as facial recognition with facial anti-spoofing and gait recognition individually and comparing the individual results in real-time with the AccessNet hybrid architecture results. This work even involves in identifying the main crucial features from each system that are responsible for predicting a subject. It includes extracting few crucial parameters from gait recognition architecture, facial recognition and facial anti-spoof architectures by visualizing the hidden layers. Each individual method is trained and tested in real-time, which is deployed on both edge device NvidiaJetsonNano, and high-end GPU. A conclusion is also adapted in terms of commercial and research usage for each single method after analysing the real-time test results
Title: Computer Vision in Contactless Biometric Systems
Description:
Contactless biometric systems have increased ever since the corona pandemic outbreak.
The two main contactless biometric systems are facial recognition and gait patterns recognition.
The authors in the previous work [11] have built hybrid architecture AccessNet.
It involves combination of three systems: facial recognition, facial anti-spoofing, and gait recognition.
This work involves deploying the hybrid architecture and deploying two individual systems such as facial recognition with facial anti-spoofing and gait recognition individually and comparing the individual results in real-time with the AccessNet hybrid architecture results.
This work even involves in identifying the main crucial features from each system that are responsible for predicting a subject.
It includes extracting few crucial parameters from gait recognition architecture, facial recognition and facial anti-spoof architectures by visualizing the hidden layers.
Each individual method is trained and tested in real-time, which is deployed on both edge device NvidiaJetsonNano, and high-end GPU.
A conclusion is also adapted in terms of commercial and research usage for each single method after analysing the real-time test results.
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