人群面部监测中同时身份、年龄和性别识别的评估

Q4 Earth and Planetary Sciences
I. Abir, Hasan Firdaus Mohd Zaki, Azhar Mohd Ibrahim
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引用次数: 0

摘要

如今,面部识别与年龄估计和性别预测相结合,已经深深地涉及到与人群监测相关的因素。这被认为是人类的一项重要而复杂的工作。本文提出了一个基于现有深度学习和机器学习模型(即FaceNet、ResNet、支持向量机、AgeNet和GenderNet)的统一面部识别系统,该系统可以自动同时执行人物识别、年龄估计和性别预测。然后在一个新提出的多人脸、逼真且具有挑战性的测试数据集上对系统进行了评估。目前的人脸识别技术主要关注已知身份的静态数据集,而不关注新身份。这种方法不适用于连续的人群监控。在我们提出的系统中,每当在推理过程中发现新身份时,系统都会为每个唯一身份保存一个适当的标签,并定期更新系统,以便在未来的推理迭代中正确识别这些身份。然而,每当检测到新身份时,提取整个数据集的面部特征并不是一个有效的解决方案。为了解决这个问题,我们提出了一种基于增量特征提取的训练方法,旨在减少特征提取的计算量。当在所提出的测试数据集上进行测试时,我们提出的系统正确识别预训练的身份、估计年龄和预测性别,平均准确率分别为49%、66.5%和93.54%。我们得出的结论是,评估的预训练模型可能对不受控制的环境(例如,突然的照明条件)敏感且不稳健。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EVALUATION OF SIMULTANEOUS IDENTITY, AGE AND GENDER RECOGNITION FOR CROWD FACE MONITORING
Nowadays, facial recognition combined with age estimation and gender prediction has been deeply involved with the factors associated with crowd monitoring. This is considered to be a major and complex job for humans. This paper proposes a unified facial recognition system based on already available deep learning and machine learning models (i.e., FaceNet, ResNet, Support Vector Machine, AgeNet and GenderNet) that automatically and simultaneously performs person identification, age estimation and gender prediction. Then the system is evaluated on a newly proposed multi-face, realistic and challenging test dataset. The current face recognition technology primarily focuses on static datasets of known identities and does not focus on novel identities. This approach is not suitable for continuous crowd monitoring. In our proposed system, whenever novel identities are found during inference, the system will save those novel identities with an appropriate label for each unique identity and the system will be updated periodically in order to correctly recognise those identities in the future inference iterations. However, extracting the facial features of the whole dataset whenever a new identity is detected is not an efficient solution. To address this issue, we propose an incremental feature extraction based training method which aims to reduce the computational load of feature extraction. When tested on the proposed test dataset, our proposed system correctly recognizes pre-trained identities, estimates age, and predicts gender with an average accuracy of 49%, 66.5% and 93.54% respectively. We conclude that the evaluated pre-trained models can be sensitive and not robust to uncontrolled environment (e.g., abrupt lighting conditions).
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来源期刊
ASEAN Engineering Journal
ASEAN Engineering Journal Engineering-Engineering (all)
CiteScore
0.60
自引率
0.00%
发文量
75
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