Deep Learning Ensemble Approach to Age Group Classification Based On Fingerprint Pattern

Olufunso OLORUNSOLA, Oluwaseyi OLORUNSHOLA
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Abstract

The age distribution of a population is extremely valuable to any business or country. In order to make decisions with regard to facility allocations and other social economic developmental issues, determination of age group distribution information is essential. The attempt to deceive others about one's age is a significant problem in the sporting world, as well as in other organizations and electoral processes. Therefore, there is a requirement for an age detection system, which is required to authenticate individual claims. Fingerprint-based age estimate research is scarce due to paucity of dataset. However, there are indications that fingerprints can reveal age demographic. This study's objective is to live-scan fingerprint images in order to identify age groups. This study proposed novel Dynamic Horizontal Voting Ensemble (DHVE) with Hybrid of Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM) as the base learner. The method constructs a horizontal voting ensemble for prediction by dynamically determining proficient models based on the validation accuracy metric during base learner training on the training set. Accuracy, recall, precision, and the F1 score were employed as standard performance metrics to measures the model's performance analysis. According to this study, predicting individual age group was accurate to a degree of above 91%. The DHVE network performed well due to the design of the layers. Integration of dynamic selection approach to horizontal voting ensemble improved the average performance of the model output.
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基于指纹模式的深度学习集成年龄组分类方法
人口的年龄分布对任何企业或国家都极具价值。为了就设施分配和其他社会经济发展问题作出决定,确定年龄组分布资料是必不可少的。在体育界,以及在其他组织和选举过程中,试图欺骗他人的年龄是一个重大问题。因此,需要一个年龄检测系统,该系统需要验证个人索赔。由于数据集的缺乏,基于指纹的年龄估计研究很少。然而,有迹象表明指纹可以揭示年龄。这项研究的目的是实时扫描指纹图像,以确定年龄组。本文提出了一种基于卷积神经网络(CNN)和长短期记忆(LSTM)的混合动态水平投票集合(DHVE)作为基础学习器。该方法在训练集上进行基础学习者训练时,根据验证精度度量动态确定熟练模型,构建水平投票集成进行预测。准确性、召回率、精度和F1分数被作为标准的性能指标来衡量模型的性能分析。根据这项研究,预测个体年龄组的准确率达到91%以上。由于层的设计,使得DHVE网络性能良好。将动态选择方法与水平投票集成相结合,提高了模型输出的平均性能。
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