Multi-channel Deep 3D Face Recognition
Zhiqian You, Tingting Yang, Miao Jin

TL;DR
This paper introduces a multi-channel deep 3D face recognition network that leverages geometric and color information from 3D face data, significantly improving recognition accuracy over traditional 2D methods.
Contribution
It proposes a novel multi-channel CNN architecture that incorporates geometric features from 3D face data by conformally flattening them into 2D images with nine channels, enhancing face recognition performance.
Findings
Achieved 98.6% recognition accuracy.
Multi-channel approach outperforms orthographic projection.
Conformal flattening improves geometric information utilization.
Abstract
Face recognition has been of great importance in many applications as a biometric for its throughput, convenience, and non-invasiveness. Recent advancements in deep Convolutional Neural Network (CNN) architectures have boosted significantly the performance of face recognition based on two-dimensional (2D) facial texture images and outperformed the previous state of the art using conventional methods. However, the accuracy of 2D face recognition is still challenged by the change of pose, illumination, make-up, and expression. On the other hand, the geometric information contained in three-dimensional (3D) face data has the potential to overcome the fundamental limitations of 2D face data. We propose a multi-Channel deep 3D face network for face recognition based on 3D face data. We compute the geometric information of a 3D face based on its piecewise-linear triangular mesh structure…
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Taxonomy
TopicsFace recognition and analysis · Biometric Identification and Security · Face and Expression Recognition
