基于深度CNN架构的高效多人多角度人脸识别

A. Tsai, Yang-Yen Ou, Liu-Yi-Cheng Hsu, Jhing-Fa Wang
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引用次数: 4

摘要

近年来,机器人的发展和应用已经成为一个著名的话题,而机器人最重要的是拟人化。本文使用网络摄像头捕捉图像作为视觉系统输入。通过高性能的人脸检测神经网络获取人脸图像。面部标志是用来矫正面部的。然后,利用人脸彩色RGB图像进行人脸特征检测和身份识别。通过训练一个完整的特征检测网络,可以检测出有效的、不同的面部特征,并针对这些特征训练分类器。我们可以通过对这些特征使用分类器来获得身份置信度。实验结果表明,该方法的身份识别准确率高达90.61%。在实际应用中,该系统可以同时识别多达数千人的身份。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient and Effective Multi-person and Multi-angle Face Recognition based on Deep CNN Architecture
Recently, the development and application of robots has become a famous topic and the most important thing for robots is personification. This paper uses a webcam to capture the image as a visual system input. The facial image is obtained through high performance face detect neural network. Facial landmarks are used to correct the face. Then, we use facial color RGB images for facial feature detection and identity recognition. By training a complete feature detection network, it is possible to detect valid and distinct facial features and train the classifier for those features. We can obtain identity confidence by using classifier for those feature. The experiment results show that the accuracy of identity recognition can be as high as 90.61%. In practical applications, the system can recognize identities up to thousands of people at the same time.
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