基于卷积神经网络的印尼语人脸识别年龄估计

Mufidatun Nisa Nur Lailiyah, A. Basofi, A. Fariza
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引用次数: 1

摘要

在印度尼西亚,年龄身份在决定许多事情方面起着重要作用,例如,决定教育、医疗和健康水平,决定允许结婚、找工作的年龄等。克服年龄造假的有效方法是识别具有独特生物特征的面部图像。年龄的发展通常由皮肤纹理和面部结构来表示,这使得估计年龄相当困难。因此,我们需要能够被说服、能够在公共利益中被解释、并且具有高度密切性的自动年龄识别。本文提出了一种基于深度卷积神经网络(CNN) DenseNet-161模型架构的印尼人脸年龄估计方法。该数据集收集了2300张年龄范围为7-22岁的印度尼西亚人的面部图像。我们将预测结果与具有3个卷积层和3个全连接的CNN自定义架构进行了比较。DenseNet-161模型的预测结果(MAE = 3.02,准确率= 67.93%,R-Squared = 0.99)优于自定义模型(MAE = 3.17,准确率= 64.47%,R-Squared = 0.97)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Age Estimation Based on Indonesian Face Recognition using Convolutional Neural Networks
In Indonesia, age identity plays an important role in deciding many things, for example, to determine the level of education, medical treatment, and health, to determine the age allowed to get married, to get a job, etc. An effective way to overcome age counterfeiting is to recognize facial images that have unique biometric features. Age development is generally indicated by skin texture and facial structure, this makes it quite difficult to estimate age. Therefore, we need automatic age identification that can be convinced, can be accounted for in the public interest, and has a high closeness. This paper proposed the age estimation of Indonesian face using Deep Convolutional Neural Networks (CNN) DenseNet-161 model architecture approach. The dataset is collected with a range of 7-22 years old of 2300 face image of Indonesian. We compare the prediction result with the custom architecture of CNN with 3 convolution layer and 3 fully connected. The prediction results of the DenseNet-161 model achieved very good prediction results (MAE = 3.02, Accuracy = 67.93%, and R-Squared = 0.99) than the custom model (MAE = 3.17, Accuracy = 64.47%, and R-Squared = 0.97).
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