使用树莓派(Raspberry PI)的局部二进制模式直方图法进行人脸识别

Budi Cahyo Wibowo, I. Rozaq, Andre Maulana Yusva
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引用次数: 0

摘要

:人类终其一生都有能力识别数十到数百张面孔。与人体测量和计算直接相关的生物识别技术之一就是能够检测和识别人脸的系统。为了克服当前的各种问题,需要通过计算机应用进行人脸识别,包括识别罪犯、开发安全系统、图像和胶片处理以及人机交互。因此,作者利用局部二进制模式直方图(LBPH)方法制作了一个基于树莓派(Raspberry Pi)的人脸识别系统。在运行人脸识别系统的过程中,首先要对进入房间的主人进行人脸采样。然后,根据所获得的人脸样本,通过局部二进制模式直方图法将图像转换为数字值,从而进行学习。这种方法可以将图像数据简化为更简单的数据,从而加快人脸识别过程。测试结果表明,人脸识别效果符合预期,甚至能够在低亮度值(≥6 勒克斯)下进行检测,人脸识别准确率甚至达到 79.15%。对于经过学习过程的人脸数据,可以识别出人脸,然后将识别出的人脸数据存储在一个目录中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face Recognition Using Local Binary Patterns Histogram Method Using Raspberry PI
: Throughout his life, humans have the ability to recognize tens to hundreds of faces. One of the biometric techniques that relate body measurements and calculations that are directly related to human characteristics is a system that can detect and identify faces. To be able to overcome various current problems, facial recognition is required through computer applications, including identification of criminals, development of security systems, image and film processing, and human-computer interaction. So the author makes a face processing system based on Raspberry Pi with the Local Binary Patterns Histogram (LBPH) method. In running a facial recognition system using a face, at the initial stage the process of sampling the face of the person who is the owner of the room access is carried out. Then from the face samples that have been obtained, the learning process is carried out by converting the image into digital values through the Local Binary Patterns Histogram method. This method reduces image data into simpler data, to speed up the face recognition process. The results of the test show that face recognition works as expected, even being able to detect at low light brightness values (≥6 lux) and even face recognition accuracy of 79.15%. For face data that has been through the learning process, the face can be recognized, then the recognized face data is stored in a directory.
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