Abstract

Most modern face recognition and classification systems mainly rely on hand-crafted image feature descriptors. In this paper, we propose a novel deep learning algorithm combining unsupervised and supervised learning named deep belief network embedded with Softmax regress (DBNESR) as a natural source for obtaining additional, complementary hierarchical representations, which helps to relieve us from the complicated hand-crafted feature-design step. DBNESR first learns hierarchical representations of feature by greedy layer-wise unsupervised learning in a feed-forward (bottom-up) and back-forward (top-down) manner and then makes more efficient recognition with Softmax regress by supervised learning. As a comparison with the algorithms only based on supervised learning, we again propose and design many kinds of classifiers: BP, HBPNNs, RBF, HRBFNNs, SVM and multiple classification decision fusion classifier (MCDFC)—hybrid HBPNNs-HRBFNNs-SVM classifier. The conducted experiments validate: Firstly, the proposed DBNESR is optimal for face recognition with the highest and most stable recognition rates; second, the algorithm combining unsupervised and supervised learning has better effect than all supervised learning algorithms; third, hybrid neural networks have better effect than single model neural network; fourth, the average recognition rate and variance of these algorithms in order of the largest to the smallest are respectively shown as DBNESR, MCDFC, SVM, HRBFNNs, RBF, HBPNNs, BP and BP, RBF, HBPNNs, HRBFNNs, SVM, MCDFC, DBNESR; at last, it reflects hierarchical representations of feature by DBNESR in terms of its capability of modeling hard artificial intelligent tasks.

Highlights

  • Face recognition (FR) is one of the main areas of investigation in biometrics and computer vision

  • We propose a novel deep learning algorithm combining unsupervised and supervised learning named deep belief network embedded with Softmax regress (DBNESR) as a natural source for obtaining additional, complementary hierarchical representations, which helps to relieve us from the complicated hand-crafted feature-design step

  • The conducted experiments validate: Firstly, the proposed DBNESR is optimal for face recognition with the highest and most stable recognition rates; second, the algorithm combining unsupervised and supervised learning has better effect than all supervised learning algorithms; third, hybrid neural networks have better effect than single model neural network; fourth, the average recognition rate and variance of these algorithms in order of the largest to the smallest are respectively shown as DBNESR, multiple classification decision fusion classifier (MCDFC), SVM, hybrid RBF neural networks (HRBFNNs), Radial Basis Function (RBF), HBPNNs, BP and BP, RBF, HBPNNs, HRBFNNs, SVM, MCDFC, DBNESR; at last, it reflects hierarchical representations of feature by DBNESR in terms of its capability of modeling hard artificial intelligent tasks

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Summary

Introduction

Face recognition (FR) is one of the main areas of investigation in biometrics and computer vision. Feature extraction is mainly to give an effective representation of each image, which can reduce the computational complexity of the classification algorithm and enhance the separability of the images to get a higher recognition rate. We propose a novel deep learning algorithm combining unsupervised and supervised learning named deep belief network embedded with Softmax regress (DBNESR) to learn hierarchical representations for FR; as a comparison with the algorithms only based on supervised learning, again design many kinds of other classifiers and make experiments to validate the effectiveness of the algorithm. 2) DBNESR is similar to the multiple nonlinear functions mapping, which can extract complex statistical dependencies from high-dimensional sensory inputs (e.g., faces) and efficiently learn deep hierarchical representations by re-using and combining intermediate concepts, allowing it to generalize well across a wide variety of computer vision (CV) tasks, including face recognition, image classification, and many others.

Images Preprocessing
Feature Extraction
Designing the Classifiers of Supervised Learning
Designing the Classifier Combining Unsupervised and Supervised Learning
Experiments
Findings
Conclusion
Full Text
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