基于光照强度的Haar级联分类器和LBPH人脸识别

Hutama Hadi, Hasdi Radiles, R. Susanti, M. Mulyono
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引用次数: 0

摘要

在新冠肺炎疫情期间实施在线学习的问题是缺乏视频流的互联网接入,特别是在小城镇或村庄。解决方案是通过只显示表情符号来最小化视频带宽配额。该过程的第一步是系统必须能够锁定要翻译的面部区域。这项研究的目的是根据相机捕捉的图像来识别人脸的区域。研究采用Haar级联分类器算法对捕获图像的面部区域进行识别。然后用局部二值模式直方图算法识别人脸的身份。灯光场景将被用作图像的分散效果。结果表明,基于在明亮条件下测试的30组图像,该系统能够识别高达62%的面部身份,正常条件下识别51%,黑暗条件下识别46%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Face Identification Using Haar Cascade Classifier and LBPH Based on Lighting Intensity
The problem in implementing online learning during the Covid-19 era is the lack of internet access for video streaming, especially in small towns or villages. The solution idea is to minimize the video bandwidth quota by only showing emoticons. The first step of the process is the system must be able to lock the face area to be translated. This study aims to identify areas of the human face based on camera captures. The research was conducted using the Haar cascade classifier algorithm to recognize the facial area of the captured image. Then the Local Binary Pattern Histogram algorithm will recognize the identity of the face. The lighting scenario will be used as a distracting effect on the image. The results showed that based on 30 sets of images tested in bright conditions, the system was able to recognize facial identities up to 62%, normal conditions 51% and dark conditions 46%.
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