在智能安全系统中使用深度学习预测人类年龄和性别

Durga Bhavani Kinthadi, Abhishekar Burugu, Anish Rumandla, S. S
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引用次数: 0

摘要

随着智能安全系统的增加,对人的准确识别和验证的需求也在增加。近年来,来自人脸的数据已被用于许多现实世界的应用,包括社交网络、安全监控、广告和娱乐。计算机视觉研究人员一直对这一话题感兴趣,因为从面部图像中自动预测年龄和性别对人际交流至关重要。这项工作预测性别将是“男”或“女”,年龄将是以下范围之一:(0-5),(6-10),(11-17),(18-25),(25-32),(33-45),(46-55),(55-70)。在该系统中,首先对图像进行预处理,然后使用卷积神经网络提取与年龄和性别相关的特征,并使用适当的分类器对图像进行分类。人脸图像取自UTK数据集,该方法的训练准确率为92.5%,验证准确率为90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Human Age and Gender Using Deep Learning For Smart Security Systems
The demand for accurate identification and verification of a person has increased as the number of smart security systems has grown. In recent years, data from a human face has been used in numerous real-world applications, including social networking, security monitoring, advertising, and entertainment. Computer vision researchers have long been interested in this topic because automatic age and gender prediction from facial images is crucial for interpersonal communication. This work predicts that the gender will be either ‘Male’ or ‘Female,’ and that the age will be one of the following ranges: (0-5), (6-10), (11-17), (18-25), (25-32), (33-45), (46-55), (55-70). In the proposed system the images are preprocessed and then the convolutional neural networks are used to extract age and gender-related features and classified the images using the appropriate classifiers. The face images are taken from the UTK dataset and the proposed method achieved a training accuracy of 92.5% and a validation accuracy of 90%.
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