基于指纹模式的人类年龄、性别和种族软生物特征联合分类的动态水平投票集成深度学习方法

Olorunsola Stephen Olufunso, A. Evwiekpaefe, Martins E. Irhebhude
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引用次数: 0

摘要

关于指纹可能揭示人类年龄、性别和种族的综合软生物特征的可能性的信息缺乏。这一挑战是由于缺乏数据。然而,这促使学者们利用目前有限的指纹数据集进行人口分类相关的工作。然而,由于研究原因,在常规和现实条件下收集的完整指纹数据集不容易获得。本研究旨在设计一个多任务深度学习模型,用于使用指纹模式对种族、性别和年龄组的组合特征进行分类。指纹数据库是在现实世界条件下使用实时扫描方法收集的,受试者来自尼日利亚三个最多的种族群体,即约鲁巴人、伊博人和豪萨人,并考虑了受试者的性别和年龄组。提出了一种基于卷积神经网络(CNN)和长短期记忆(LSTM)作为基础(弱)学习器的新型动态水平投票集成(DHVE)指纹图像分类和训练方法。采用动态选择方法确定普通水平投票集成中的分类器,提高了集成技术的平均准确率。实现了包括Accuracy、hold in thoughts、Precision和F1评级在内的标准性能分类度量来评估模型的性能。结果显示,预测人的年龄、种族和性别的准确率为76%。我们还将其性能与其他方法进行了比较。在性能指标方面,它优于CNN模型等其他尖端算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Horizontal Voting Ensemble Deep Learning Approach to Combined Classification for Human Age, Gender and Ethnicity Soft Biometric Using Fingerprint Pattern
There is paucity of information regarding the probability that fingerprints may reveal combined soft biometric trait of human age, gender, and ethnicity. This challenge is due to lack of data. This has however, prompted academics to conduct their demographic classification-related work using the limited fingerprint dataset that is now available. However, complete fingerprint datasets collected under conventional and real-world conditions are not easily available for research reasons. This research aims to design a multi-task Deep Learning model for classifying the combined traits of ethnicity, gender, and age group estimation using fingerprint pattern. The fingerprint database was collected using a live scan method in real-world conditions, with subjects from three most numerous racial groups of Nigeria which are Yoruba, Igbo and Hausa, with consideration of the subject gender and age groups. The proposed method for the fingerprint image classification and training is the novel Dynamic Horizontal Voting Ensemble (DHVE) with Hybrid of Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM) being utilized as the base (weak) learner. The dynamic selection method was utilized to determine classifiers in the normal horizontal voting ensemble, hence enhancing the ensemble technique's average accuracy. Standard performance classification metric inclusive of Accuracy, hold in thoughts, Precision, and F1 rating had been implemented to evaluate the model's performance. The result shows 76% accuracy in predicting person’s combined age group, ethnicity and gender. We also compared its performance against other approaches. It outperforms other cutting-edge algorithm like the CNN model in terms of performance metrics.
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