Age and Gender Estimation using Optimised Deep Networks

W.John S. Downton, Hima Vadapalli
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引用次数: 1

Abstract

Age and gender estimation plays a fundamental role in intelligent applications such as access control, marketing intelligence, human-computer interaction etc. The advent of deep architectures have paved a way to improve the performance of estimation models, however, there is still a lack of optimized architectures. This paper focuses on the use of convolutional neural networks, and parameter modeling and optimization, and their effect on accuracy and loss term convergence. This paper first makes use of a generalized deep architecture based on literature and looks at ways of optimizing and reducing complexity without loss of accuracy. Different activation functions such as rectified linear unit (ReLU), linear function, exponential linear unit (ELU), hyperbolic tangent and Googles' proposed Swish function were tested along with the use of additional convolutional and fully-connected layers. Experiments resulted in a less complex architecture for gender classification and results were in line with that of benchmark accuracies found in literature, however, the same couldn't be achieved for age estimation. The inability to find a simpler architecture for age estimation is attributed to the complex nature of features that are associated with age than that of gender and also the multi-class classification nature of the age estimation problem.
使用优化的深度网络估计年龄和性别
年龄和性别估计在访问控制、营销智能、人机交互等智能应用中起着重要的作用。深度体系结构的出现为提高估计模型的性能铺平了道路,然而,仍然缺乏优化的体系结构。本文重点介绍了卷积神经网络的使用,以及参数建模和优化,以及它们对精度和损失项收敛的影响。本文首先利用了基于文献的广义深度架构,并研究了在不损失准确性的情况下优化和降低复杂性的方法。不同的激活函数,如整流线性单元(ReLU)、线性函数、指数线性单元(ELU)、双曲正切和谷歌提出的Swish函数,以及使用额外的卷积和全连接层进行了测试。实验结果表明,性别分类的结构不那么复杂,结果与文献中发现的基准准确率一致,但年龄估计无法达到相同的精度。无法找到一个更简单的年龄估计体系结构是由于与年龄相关的特征比与性别相关的特征复杂,以及年龄估计问题的多类分类性质。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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