Masked & Unmasked Face Recognition Using Support Vector Machine Classifier

Poornima P D, Paras Nath Singh
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引用次数: 2

Abstract

Face masks become a need in epidemic scenarios such as the Corona virus pandemic of 2020-21. Most companies prefer face authentication instead of fingerprint, signature, and card verification. Face mask gives protection against Corona virus than other traditional methods used for identification. In the case of facial recognition, a machine must detect and recognise the face in a picture. In this paper used methods are supported by machine learning that permits a machine to evolve through a learning process and to perform recognition tasks. Caffe model of deep learning is used for face detection. The training dataset contains both masked and non-masked faces. This project and outcome has developed an approach to recognize faces in a real-time video stream that can also be used in the existing recognition systems to identify masked faces. Facial recognition has been done with a Support Vector Machine classifier. All are implemented in Python with OpenCv with tools modules and sub-modules.
基于支持向量机分类器的蒙面与非蒙面人脸识别
在2020-21年冠状病毒大流行等疫情情况下,口罩成为一种需求。大多数公司更喜欢面部认证,而不是指纹、签名和卡片验证。与其他传统的识别方法相比,口罩可以预防冠状病毒。在面部识别的情况下,机器必须检测和识别照片中的人脸。在本文中使用的方法由机器学习支持,允许机器通过学习过程进化并执行识别任务。人脸检测采用深度学习的Caffe模型。训练数据集包含被屏蔽和未被屏蔽的人脸。该项目和成果已经开发出一种在实时视频流中识别人脸的方法,该方法也可用于现有的识别系统中,以识别蒙面人脸。面部识别已经完成了支持向量机分类器。所有这些都是在Python中使用OpenCv通过工具模块和子模块实现的。
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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