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基于嵌入式电路使用MORSCMs-LBP的快速准确人脸识别系统。

Fast and accurate face recognition system using MORSCMs-LBP on embedded circuits.

作者信息

Hosny Khalid M, Hamad Aya Y, Elkomy Osama, Mohamed Ehab R

机构信息

Department of Information Technology, Faculty of Computers and Informatics, Zagazig University, Zagazig, Egypt.

Department of Information Technology/Information Technology and Computer Science, Sinai University, North Sinai, Al Arish, Egypt.

出版信息

PeerJ Comput Sci. 2022 Jun 28;8:e1008. doi: 10.7717/peerj-cs.1008. eCollection 2022.

Abstract

Because of the current COVID-19 circumstances in the world and the tremendous technological developments, it has become necessary to use this technology to combat the spread of the new coronavirus. The systems that depend on using hands, such as fingerprint systems and PINs in ATM systems, could lead to infection, so they have become undesirable and we can replace them by using facial recognition instead. With the development of technology and the availability of nano devices like the Raspberry Pi, such applications can be implemented easily. This study presents an efficient face recognition system in which the face image is taken by a standalone camera and then passed to the Raspberry Pi to extract the face features and then compare them with the database. This approach is named MORSCMs-LBP by combining two algorithms for feature extraction: Local Binary Pattern (LBP) as a local feature descriptor and radial substituted Chebyshev moments (MORSCMs) as a global feature descriptor. The significant advantage of this method is that it combines the local and global features into a single feature vector from the detected faces. The proposed approach MORSCMs-LBP has been implemented on the Raspberry Pi 4 computer model B with 1 GB of RAM using C++ OpenCV. We assessed our method on various benchmark datasets: face95 with an accuracy of 99.0278%, face96 with an accuracy of 99.4375%, and grimace with 100% accuracy. We evaluated the proposed MORSCMs-LBP technique against other recently published approaches; the comparison shows a significant improvement in favour of the proposed approach.

摘要

由于当前世界范围内的新冠疫情形势以及巨大的技术发展,利用这项技术来对抗新型冠状病毒的传播变得十分必要。依赖手部操作的系统,如指纹系统和自动取款机系统中的个人识别码,可能会导致感染,因此它们已不再可取,我们可以用面部识别来取而代之。随着技术的发展以及诸如树莓派这样的纳米设备的出现,此类应用可以轻松实现。本研究提出了一种高效的人脸识别系统,其中人脸图像由独立摄像头采集,然后传递给树莓派以提取人脸特征,再将其与数据库进行比较。通过结合两种特征提取算法,即作为局部特征描述符的局部二值模式(LBP)和作为全局特征描述符的径向替代切比雪夫矩(MORSCMs),这种方法被命名为MORSCMs-LBP。该方法的显著优势在于,它将局部和全局特征整合到从检测到的人脸中提取的单个特征向量中。所提出的MORSCMs-LBP方法已在具有1GB内存的树莓派4 B型计算机模型上使用C++ OpenCV实现。我们在各种基准数据集上评估了我们的方法:face95的准确率为99.0278%,face96的准确率为99.4375%,鬼脸数据集的准确率为100%。我们将所提出的MORSCMs-LBP技术与其他近期发表的方法进行了比较;比较结果显示所提出的方法有显著改进。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f309/9299277/a1b8304314cc/peerj-cs-08-1008-g001.jpg

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