Employee Face Recognition Scheme Using A Common Space Mapping Approach
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Date
2022-07
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IEEE
Abstract
In this work, we present a FaceNet based ‘two branch’ model for employee face recognition in low resolution images captured using substandard camera sensors. Our model involves a common space mapping approach using two deep convolutional neural networks (DCNNs) that map the low resolution and high resolution face images to a common space. The model is trained such that the distance between the two mapped images in the common space is minimized. Then, a logistic regression classifier is used to classify the mapped image by the identity of the employee. We show through simulations that the presented model achieves a recognition accuracy of 99.84%, 98.88%, and 95.53% on 36×36, 24×24, and 16×16 resolution images, respectively, for 209 subjects. Furthermore, the proposed model has less space (90 Megabytes) and computation requirements making it suitable for systems having low computing power and memory.
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Keywords
EEE, Common space mapping, Deep convolutional neural networks (DCNNs), Face recognition, Feature extractions, Low resolution