Face Detection and Recognition Using OpenCV

Maliha Khan, Sudeshna Chakraborty, Rani Astya, Shaveta Khepra
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引用次数: 113

Abstract

Face detection and picture or video recognition is a popular subject of research on biometrics. Face recognition in a real-time setting has an exciting area and a rapidly growing challenge. Framework for the use of face recognition application authentication. This proposes the PCA (Principal Component Analysis) facial recognition system. The key component analysis (PCA) is a statistical method under the broad heading of factor analysis. The aim of the PCA is to reduce the large amount of data storage to the size of the feature space that is required to represent the data economically. The wide 1-D pixel vector made of the 2-D face picture in compact main elements of the space function is designed for facial recognition by the PCA. This is called a projection of self-space. The proper space is determined with the identification of the covariance matrix’s own vectors, which are centered on a collection of fingerprint images. I build a camera-based real-time face recognition system and set an algorithm by developing programming on OpenCV, Haar Cascade, Eigenface, Fisher Face, LBPH, and Python.
基于OpenCV的人脸检测与识别
人脸检测和图像或视频识别是生物识别领域的一个热门研究课题。实时环境下的人脸识别是一个令人兴奋的领域,也是一个快速增长的挑战。使用框架进行人脸识别认证的应用程序。提出了基于主成分分析的人脸识别系统。关键成分分析(PCA)是因子分析的一种统计方法。PCA的目的是将大量的数据存储减少到经济地表示数据所需的特征空间的大小。利用主成分分析设计了由二维人脸图像在紧凑的空间函数主元素中构成的宽一维像素向量,用于人脸识别。这被称为自我空间的投影。以指纹图像集合为中心,通过协方差矩阵自身向量的识别来确定合适的空间。通过OpenCV、Haar Cascade、Eigenface、Fisher face、LBPH、Python编程,构建了一个基于摄像头的实时人脸识别系统,并设置了算法。
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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