Abstract

In recent years, 3D face recognition has attracted increasing attention from worldwide researchers. Rather than homogeneous face data, more and more applications require flexible input face data nowadays. In this paper, we propose a new approach for cross-modality 2D-3D face recognition (FR), which is called Multiview Smooth Discriminant Analysis (MSDA) based on Extreme Learning Machines (ELM). Adding the Laplacian penalty constrain for the multiview feature learning, the proposed MSDA is first proposed to extract the cross-modality 2D-3D face features. The MSDA aims at finding a multiview learning based common discriminative feature space and it can then fully utilize the underlying relationship of features from different views. To speed up the learning phase of the classifier, the recent popular algorithm named Extreme Learning Machine (ELM) is adopted to train the single hidden layer feedforward neural networks (SLFNs). To evaluate the effectiveness of our proposed FR framework, experimental results on a benchmark face recognition dataset are presented. Simulations show that our new proposed method generally outperforms several recent approaches with a fast training speed.

Highlights

  • During the past several decades, face recognition (FR) has gained a widespread attention due to its potential application values as well as theoretical challenges compared with other biometrics [1]. 2D face recognition has achieved many good results under certain conditions

  • 3D face recognition (3D FR) algorithms consist of three main steps: 3D data preprocessing and normalization, 3D facial feature extraction, and pattern classification. 3D facial feature extraction plays a vital role in 3D

  • We use the five front images per person as the training set, and the remaining images are utilized as the testing set

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Summary

Introduction

During the past several decades, face recognition (FR) has gained a widespread attention due to its potential application values as well as theoretical challenges compared with other biometrics [1]. 2D face recognition has achieved many good results under certain conditions. The high computational complex limits its applications on high dimensional face features and large face databases To address this problem, a novel approach named Multiview Smooth Discriminant Analysis based on the recent Extreme Learning Machines (ELM) (Figure 1) is presented for cross-modality 2D-3D FR in this paper. A novel approach named Multiview Smooth Discriminant Analysis based on the recent Extreme Learning Machines (ELM) (Figure 1) is presented for cross-modality 2D-3D FR in this paper In this new Journal of Electrical and Computer Engineering. Approach, Multiview Smooth Discriminant Analysis is first formulated to solve the multiple view-specific linear projections by adding the Laplacian smoothing constraint and to learn the common feature space for the cross-modality 2D3D face features.

Related Work
The Proposed Cross-Modality 2D-3D FR
Experiments
Conclusion
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