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Automatic Age Estimation from Real-World and Wild Face Images by Using Deep Neural Networks

机译:使用深度神经网络从真实世界和野蛮人脸图像中自动进行年龄估计

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摘要

Automatic age estimation from real-world and wild face images is a challenging task and has an increasing importance due to its wide range of applications in current and future lifestyles. As a result of increasing age specific human-computer interactions, it is expected that computerized systems should be capable of estimating the age from face images and respond accordingly. Over the past decade, many research studies have been conducted on automatic age estimation from face images.;In this research, new approaches for enhancing age classification of a person from face images based on deep neural networks (DNNs) are proposed. The work shows that pre-trained CNNs which were trained on large benchmarks for different purposes can be retrained and fine-tuned for age estimation from unconstrained face images. Furthermore, an algorithm to reduce the dimension of the output of the last convolutional layer in pre-trained CNNs to improve the performance is developed. Moreover, two new jointly fine-tuned DNNs frameworks are proposed. The first framework fine-tunes tow DNNs with two different feature sets based on the element-wise summation of their last hidden layer outputs. While the second framework fine-tunes two DNNs based on a new cost function. For both frameworks, each has two DNNs, the first DNN is trained by using facial appearance features that are extracted by a well-trained model on face recognition, while the second DNN is trained on features that are based on the superpixels depth and their relationships.;Furthermore, a new method for selecting robust features based on the power of DNN and l21-norm is proposed. This method is mainly based on a new cost function relating the DNN and the L21 norm in one unified framework. To learn and train this unified framework, the analysis and the proof for the convergence of the new objective function to solve minimization problem are studied. Finally, the performance of the proposed jointly fine-tuned networks and the proposed robust features are used to improve the age estimation from the facial images. The facial features concatenated with their corresponding robust features are fed to the first part of both networks and the superpixels features concatenated with their robust features are fed to the second part of the network.;Experimental results on a public database show the effectiveness of the proposed methods and achieved the state-of-art performance on a public database.
机译:根据现实世界和野蛮人脸图像进行自动年龄估计是一项艰巨的任务,并且由于其在当前和未来生活方式中的广泛应用,其重要性日益提高。由于特定于年龄的人机交互作用的增加,预计计算机化系统应该能够从面部图像估计年龄并做出相应的反应。在过去的十年中,已经进行了许多关于从面部图像进行自动年龄估计的研究。在本研究中,提出了基于深度神经网络(DNN)来增强面部图像的年龄分类的新方法。这项工作表明,可以对未经培训的CNN(针对不同目的在大型基准上进行培训)进行重新培训和微调,以根据不受约束的面部图像进行年龄估算。此外,开发了一种算法来减小预训练的CNN中最后一个卷积层的输出尺寸以提高性能。此外,提出了两个新的联合微调DNN框架。第一个框架基于两个DNN的最后一个隐藏层输出的元素求和来微调具有两个不同特征集的两个DNN。而第二个框架基于新的成本函数微调两个DNN。对于这两个框架,每个都有两个DNN,第一个DNN通过使用经过良好训练的人脸识别模型提取的面部外观特征进行训练,而第二个DNN在基于超像素深度及其关系的特征上进行训练进一步,提出了一种基于DNN和121范数的能力选择鲁棒特征的新方法。该方法主要基于在一个统一框架中将DNN和L21规范相关的新成本函数。为了学习和训练这个统一的框架,研究了解决最小化问题的新目标函数的收敛性的分析和证明。最后,所提出的联合微调网络的性能和所提出的鲁棒特征被用来改善根据面部图像的年龄估计。与相应的鲁棒性特征相联系的面部特征被馈送到两个网络的第一部分,与它们的鲁棒性特征相联系的超像素特征被馈给网络的第二部分。;在公共数据库上的实验结果表明了所提出的方法的有效性。的方法,并在公共数据库上取得了最新的性能。

著录项

  • 作者

    Qawaqneh, Zakariya.;

  • 作者单位

    University of Bridgeport.;

  • 授予单位 University of Bridgeport.;
  • 学科 Artificial intelligence.;Computer science.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 99 p.
  • 总页数 99
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 农业化学;
  • 关键词

  • 入库时间 2022-08-17 11:54:24

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