利用计算机视觉和机器学习算法分析人脸检测和识别方法

L. D. Costa, Thiago Luz de Sousa, Francisco Assis da Silva, Leandro Luiz de Almeida, Danillo Roberto Pereira, A. O. Artero, M. A. Piteri
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引用次数: 1

摘要

近几十年来,科技的进步为人类的各种应用提供了许多便利,面部识别技术就是其中之一。从数字图像中进行人脸识别有几个问题需要解决,比如改变环境照明、改变面部物理特征和所用图像的分辨率。这项工作旨在对一些检测和面部识别方法进行比较分析,以及它们的执行时间。我们使用特征脸,渔场脸和LBPH人脸识别算法与Haar级联人脸检测算法,都来自OpenCV库。我们还探索了将CNN神经网络与HOG面部检测算法一起用于面部识别,这些算法来自Dlib库。除了分析算法与命中率的关系外,还考虑了可靠性和执行时间等因素
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ANÁLISE DE MÉTODOS DE DETECÇÃO E RECONHECIMENTO DE FACES UTILIZANDO VISÃO COMPUTACIONAL E ALGORITMOS DE APRENDIZADO DE MÁQUINA
The advancement in technology in recent decades has provided many facilities for humanity in various applications, and facial recognition technology is one of them. There are several problemsto be solved to perform face recognition from digital images, such as varying ambient lighting, changing the face physical characteristics and resolution of the images used. This work aimed to perform a comparative analysis between some of thedetection and facial recognition methods, as well as their execution time. We use the Eigenface, Fisherface and LBPH facial recognition algorithms in conjunction with the Haar Cascade facedetection algorithm, all from the OpenCV library. We also explored the use of CNN neural network for facial recognition in conjunction with the HOG facial detection algorithm, these from the Dlib library. The work aimed, besides analyzing the algorithms in relation to hit rates, factors such as reliability and execution time were also considered
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