基于卷积神经网络的面部年龄估计

Abdulfattah E. Ba Alawi, Ahmed Y. A. Saeed
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引用次数: 2

摘要

与年龄相关的分析近年来一直受到关注,因为许多实现具有重要意义。面部年龄预测和分类技术是近年来应用于面部活力研究的常用技术,但这些技术耗时长。在解决年龄估计问题上,深度算法比其他方法具有更高的效率。本文提出了一种基于深度年龄估计的年龄分类模型。这项工作引入了一个年龄识别模型,有助于将一个人的图像分类到一个合适的年龄组。该模型在预测过程中取得了较好的效果,使用InceptionV4的预测准确率达到85.7%。本工作与相关工作的主要区别在于,本工作重点突出了四个预训练模型的性能,其中三个模型具有不同的架构;ResNet50、ResNet101、Sequeeze1_0和InceptionV4。在深年龄评估方案中,我们查看以前的研究计划和当前的通用数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Facial Age Estimation Using Convolution Neural Networks
Age-related analysis has been a concern in the current years because many implementations have a great significance. The techniques of facial age prediction and classification are commonly used in the recent years for vitality applications but these techniques are time-consuming. The deep algorithms demonstrated superior efficiency compared to other approaches in order to solve the problem of age estimation. Herein, an age classification model is proposed using the mechanisms of deep age estimation in this article. This work introduces an age recognition model that helps to classify a person's image into a suitable aging group. The proposed model achieved better results in the prediction process with an accuracy reached 85.7% using InceptionV4. The main difference between this work and the relevant related works is that this work focuses on highlighting the performance of four pre-trained models three of them have different architectures; ResNet50, ResNet101, Sequeeze1_0, and InceptionV4. In deep age evaluation schemes, we look at previous study initiatives and current common datasets.
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