Facial Images Improvement in the LBPH Algorithm Using the Histogram Equalization Method

Aditya Salman, Mardhiya Hayaty, Ika Nur Fajri
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引用次数: 1

Abstract

In face recognition research, detecting several parts of the face becomes a necessary part of the study. The main factor in this work is lighting; some obstacles emerge when the low light's intensity falls in the process of face detection because of some conditions, such as weather, season, and sunlight. This study focuses on detecting faces in dim lighting using the Local Binary Pattern Histogram (LBPH) algorithm assisted by the Classifier Method, which is often used in face detection, namely the Haar Cascade Classifier. Furthermore, It will employ the image enhancement method, namely Histogram Equalization (HE), to improve the image source from the webcam. In the evaluation, different light intensities and various head poses affect the accuracy of the method. As a result, The research reaches 88% accuracy for successful face detection. Some factors such as head accessories, hair covering the face, and several parts of the face, like the eye, mouth, and nose that are invisible, should not be extreme.
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利用直方图均衡化方法改进LBPH算法中的面部图像
在人脸识别研究中,检测人脸的若干部分成为研究的必要环节。这项工作的主要因素是照明;在人脸检测过程中,由于天气、季节、光照等条件的影响,当弱光强度下降时,会出现一些障碍。本研究主要利用局部二值模式直方图(Local Binary Pattern Histogram, LBPH)算法,辅以人脸检测中常用的分类器方法,即Haar级联分类器,对昏暗灯光下的人脸进行检测。此外,它将采用图像增强方法,即直方图均衡化(Histogram Equalization, HE)来改进来自网络摄像头的图像源。在评估中,不同的光强和不同的头部姿势影响了方法的准确性。因此,该研究成功的人脸检测准确率达到88%。有些因素,如头饰、头发遮住脸部,以及脸部的几个部位,如眼睛、嘴巴和鼻子是看不见的,不应该是极端的。
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