Abstract

Human facial age estimation has been widely used in many computer vision applications, including security surveillance, forensics, biometrics, human–computer interaction (HCI), and so on. We propose a facial age estimation method oriented to non-ideal facial imagery. The method consists of image preprocessing, feature extraction, and age predication. First, we preprocess non-ideal input images in RGB stream, luminance modified (LM) stream, and YIQ stream. Then, we leverage the deep convolutional neural networks (DCNNs) to extract the feature of images preprocessed in each stream. To reduce the training data volume and training complexity, we adopt the transfer learning to build the DCNN structure. With the extracted feature, the weak classifier equipped at every stream is designed to obtain a weak classification prediction of the age range. Moreover, in order to generate estimation, we use the ensemble learning to fuse the three weak classifiers. We design an integrated strategy algorithm based on the combination of voting method and weighted average method. The simulation results show that our proposed algorithm can improve the an exact match (AEM) and an error of one age category (AEO) by 4.75% and 6.75% compared with the best AEM and AEO of the three weak classifiers. Furthermore, in comparison with the unweighted average method, our proposed algorithm can improve the AEM and AEO by 8.68% and 12.79%, respectively.

Highlights

  • With the rapid development of computer vision and pattern recognition, the human face detection and recognition technologies have been increasingly improved

  • Since each stream carries out distinct image preprocessing, the three-stream model can improve the accuracy of image classification through eliminating adverse factors of original images

  • We constructed a three-stream model based on deep convolutional neural networks (DCNNs) for non-ideal facial images age estimation

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Summary

INTRODUCTION

With the rapid development of computer vision and pattern recognition, the human face detection and recognition technologies have been increasingly improved. It is difficult to propose a generic model to extract features of individuals’ facial images at different age stages. It implies that in general, we can obtain nonideal facial images, instead of the legible ones The use of the DCNN approach requires a large amount of data and training time to facilitate a complex end-to-end feature extraction and classification process [18]. To overcome this bottleneck, we employ the transfer learning [19] to build the DCNN structure.

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