Agbo-Ajala Olatunbosun, Viriri Serestina
School of Mathematics, Statistics and Computer Science, University of Kwazulu-Natal, Westville, Durban 4000, South Africa.
ScientificWorldJournal. 2020 Apr 30;2020:1289408. doi: 10.1155/2020/1289408. eCollection 2020.
Age and gender predictions of unfiltered faces classify unconstrained real-world facial images into predefined age and gender. Significant improvements have been made in this research area due to its usefulness in intelligent real-world applications. However, the traditional methods on the unfiltered benchmarks show their incompetency to handle large degrees of variations in those unconstrained images. More recently, Convolutional Neural Networks (CNNs) based methods have been extensively used for the classification task due to their excellent performance in facial analysis. In this work, we propose a novel end-to-end CNN approach, to achieve robust age group and gender classification of unfiltered real-world faces. The two-level CNN architecture includes feature extraction and classification itself. The feature extraction extracts feature corresponding to age and gender, while the classification classifies the face images to the correct age group and gender. Particularly, we address the large variations in the unfiltered real-world faces with a robust image preprocessing algorithm that prepares and processes those faces before being fed into the CNN model. Technically, our network is pretrained on an IMDb-WIKI with noisy labels and then fine-tuned on MORPH-II and finally on the training set of the OIU-Adience (original) dataset. The experimental results, when analyzed for classification accuracy on the same OIU-Adience benchmark, show that our model obtains the state-of-the-art performance in both age group and gender classification. It improves over the best-reported results by 16.6% (exact accuracy) and 3.2% (one-off accuracy) for age group classification and also there is an improvement of 3.0% (exact accuracy) for gender classification.
未经过滤的面部图像的年龄和性别预测可将无约束的真实世界面部图像分类到预定义的年龄和性别类别中。由于其在智能现实世界应用中的实用性,该研究领域已取得显著进展。然而,基于未经过滤基准的传统方法在处理那些无约束图像中的大量变化时显得无能为力。最近,基于卷积神经网络(CNN)的方法因其在面部分析中的出色表现而被广泛用于分类任务。在这项工作中,我们提出了一种新颖的端到端CNN方法,以实现对未经过滤的真实世界面部进行稳健的年龄组和性别分类。两级CNN架构包括特征提取和分类本身。特征提取提取与年龄和性别对应的特征,而分类则将面部图像分类到正确的年龄组和性别。特别地,我们使用一种稳健的图像预处理算法来处理未经过滤的真实世界面部中的大量变化,该算法在将这些面部输入CNN模型之前对其进行准备和处理。从技术上讲,我们的网络在带有噪声标签的IMDb-WIKI上进行预训练,然后在MORPH-II上进行微调,最后在OIU-Adience(原始)数据集的训练集上进行微调。在相同的OIU-Adience基准上分析分类准确率时,实验结果表明,我们的模型在年龄组和性别分类方面均取得了领先的性能。在年龄组分类方面,它比最佳报告结果提高了16.6%(精确准确率)和3.2%(一次性准确率),在性别分类方面也提高了3.0%(精确准确率)。