Facial Recognition Using a Lightweight Deep Neural Networks

Jonathan Hiebert, Feezan Mazhar, Micahl Derosa, A. Sheta
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引用次数: 1

Abstract

Current facial recognition systems are still far away from the capability of the human’s face perception. Facial recognition systems can continue to be improved as technology evolves. The task of face recognition has been heavily explored in recent years. In this research, we provide our initial idea in developing Lightweight Deep Neural Networks for facial recognition. Although our goal was to create an optimal model that would exceed current facial recognition model performance, we could experiment and discover alternative approaches to multi-class facial recognition/classification. We tested with a dataset of 2800 images of men and women with specified image sizes. We created three CNN with various architectures, which we used to train with the chosen dataset for 20, 50, 100, and 200 classes per model. The experimental results exhibit the challenges of increasing the complexity of neural networks. From these results, we concluded that a Light CNN Model with a small number of layers had an average test accuracy of 94.19%, which was the best classification performance on unseen data.
使用轻量级深度神经网络的面部识别
目前的人脸识别系统距离人类的人脸感知能力还有很大的距离。随着技术的发展,面部识别系统可以继续得到改进。近年来,人们对人脸识别任务进行了大量的探索。在这项研究中,我们提供了开发用于面部识别的轻量级深度神经网络的初步想法。虽然我们的目标是创建一个超越当前面部识别模型性能的最佳模型,但我们可以实验并发现多类面部识别/分类的替代方法。我们使用2800张男女图像的数据集进行测试,这些图像具有指定的图像大小。我们创建了三个具有不同架构的CNN,我们使用所选择的数据集训练每个模型的20、50、100和200个类。实验结果显示了增加神经网络复杂性的挑战。从这些结果中,我们得出结论,层数较少的Light CNN Model的平均测试准确率为94.19%,是对未见数据的最佳分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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