基于改进型人脸识别的智能考勤系统

Thai-Viet Dang
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引用次数: 1

摘要

如今,第四次工业革命取得了高技术的重大进步,人工智能得到了蓬勃发展。在实际应用中,人脸识别是计算机视觉领域最重要的任务之一,具有从安防、考勤系统到智能服务等多种应用前景。在本文中,我们提出了一种高效的深度学习人脸识别方法。本文采用基于MobileNetV2骨干网和SSD分段的改进型FaceNet模型架构。改进的体系结构采用深度可分离卷积,减小了模型尺寸和计算量,达到了较高的精度和处理速度。为了解决识别一个人进入和离开一个区域的问题,并在高级移动设备上集成限制(如有限的内存和设备上的存储)高度移动资源。特别是,我们的方法在实际应用中取得了更好的结果,在原始人脸图像的小数据集上,准确率超过95%。所获得的帧率(25 FPS)与使用神经网络的人脸识别领域相比是非常有利的。此外,基于解的深度学习可以应用于许多低容量硬件或优化系统资源。最后,基于改进的高效人脸识别技术,成功设计了智能自动考勤系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smart Attendance System based on improved Facial Recognition
Nowadays, the fourth industrial revolution has achieved significant advancement in high technology, in which artificial intelligence has had vigorous development. In practice, facial recognition is one most essential tasks in the field of computer vision with various potential applications from security and attendance system to intelligent services. In this paper, we propose an efficient deep learning approach to facial recognition. The paper utilizes the architecture of improved FaceNet model based on MobileNetV2 backbone with SSD subsection. The improved architecture uses depth-wise separable convolution to reduce the model size and computational volume and achieve high accuracy and processing speed. To solve the problem of identifying a person entering and exiting an area and integrating on advanced mobile devices limits to (such as limited memory and on-device storage) highly mobile resources. Especially, our approach yields better results in practical application with more than 95% accuracy on a small dataset of the original face images. Obtained frame rate (25 FPS) is very favorable compared to the field of facial recognition using neural network. Besides, the deep learning based on solution could be applicable in many low-capacity hardware or optimize system’s resource. Finally, the smart automated attendance systems is successfully designed basing on the improved efficient facial recognition.
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