Onyemachi Joshua, Ndubuisi, Gift Adene, Belonwu Tochukwu Sunday, Chinedu E. Mbonu, Adannaya Uneke Gift-Adene
{"title":"利用 HAAR 级联分类器技术为尼日利亚刑事调查提供数字刑事生物特征档案 (DICA) 和公共面部识别系统 (FRS)","authors":"Onyemachi Joshua, Ndubuisi, Gift Adene, Belonwu Tochukwu Sunday, Chinedu E. Mbonu, Adannaya Uneke Gift-Adene","doi":"10.30574/wjaets.2024.11.2.0077","DOIUrl":null,"url":null,"abstract":"In Nigeria, there are many different security concerns and thus crimes have increased despite the fact that there are stringent laws and punishments in place to deter them, making it appear as though the authorities are unable to stop it. In order to identify criminals and conduct investigations, it is imperative that a facial recognition system be connected to a constantly updated digital library. The focus of this paper is to develop an automatic criminal investigation system that can identify criminals based on their faces and produce real-time digital archives about them. However, as an object detection method and facial recognition model, the new system is built on the Haar Cascades Classifier technique in the OpenCV package. Additionally, appropriate programming languages that may provide the needed results were investigated. Python 3.6 was used with the Django 4.2 framework, OpenCV-Python, and Dlib for language execution. Due to Django's ORM, support for numerous databases, and usage of the SQLite3 database, a straightforward database was employed for lightweight applications. The 12 factor app idea was used to construct the DICA-FR system's essential skills. Face detection was applied to the image using the Haar method during processing, and during post-processing, the discovered face was compared with well-known criminal face encodings for matching purposes. Results demonstrated that DICA-FRS could effectively replace human systems since it can recover faces from the furthest distances, display the name of the offender, and sound an alert on the DICA web app's output screen. The DICA system is a working prototype of a system that might be used in the criminal investigative process in Nigeria.","PeriodicalId":275182,"journal":{"name":"World Journal of Advanced Engineering Technology and Sciences","volume":"50 6","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-03-30","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Digital Criminal Biometric Archives (DICA) and Public Facial Recognition System (FRS) for Nigerian criminal investigation using HAAR cascades classifier technique\",\"authors\":\"Onyemachi Joshua, Ndubuisi, Gift Adene, Belonwu Tochukwu Sunday, Chinedu E. 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引用次数: 0
摘要
在尼日利亚,存在着许多不同的安全问题,因此,尽管有严格的法律和惩罚措施来遏制犯罪,但犯罪活动却有增无减,使当局似乎无力制止。为了识别罪犯和开展调查,面部识别系统必须与不断更新的数字图书馆相连接。本文的重点是开发一种自动刑侦系统,该系统可以根据罪犯的面孔进行识别,并实时生成有关罪犯的数字档案。不过,作为一种对象检测方法和面部识别模型,新系统是基于 OpenCV 软件包中的 Haar Cascades 分类器技术构建的。此外,还研究了可提供所需结果的适当编程语言。Python 3.6 与 Django 4.2 框架、OpenCV-Python 和 Dlib 一起用于语言执行。由于 Django 的 ORM、对众多数据库的支持以及 SQLite3 数据库的使用,轻量级应用程序采用了直接的数据库。DICA-FR 系统的基本技能采用了 12 因子应用程序的理念。在处理过程中,使用 Haar 方法对图像进行人脸检测;在后处理过程中,将发现的人脸与著名的犯罪人脸编码进行比较,以实现匹配目的。结果表明,DICA-FRS 可以有效取代人工系统,因为它可以从最远距离恢复人脸,显示罪犯的姓名,并在 DICA 网络应用程序的输出屏幕上发出警报。DICA 系统是一个可用于尼日利亚刑事调查过程的工作系统原型。
Digital Criminal Biometric Archives (DICA) and Public Facial Recognition System (FRS) for Nigerian criminal investigation using HAAR cascades classifier technique
In Nigeria, there are many different security concerns and thus crimes have increased despite the fact that there are stringent laws and punishments in place to deter them, making it appear as though the authorities are unable to stop it. In order to identify criminals and conduct investigations, it is imperative that a facial recognition system be connected to a constantly updated digital library. The focus of this paper is to develop an automatic criminal investigation system that can identify criminals based on their faces and produce real-time digital archives about them. However, as an object detection method and facial recognition model, the new system is built on the Haar Cascades Classifier technique in the OpenCV package. Additionally, appropriate programming languages that may provide the needed results were investigated. Python 3.6 was used with the Django 4.2 framework, OpenCV-Python, and Dlib for language execution. Due to Django's ORM, support for numerous databases, and usage of the SQLite3 database, a straightforward database was employed for lightweight applications. The 12 factor app idea was used to construct the DICA-FR system's essential skills. Face detection was applied to the image using the Haar method during processing, and during post-processing, the discovered face was compared with well-known criminal face encodings for matching purposes. Results demonstrated that DICA-FRS could effectively replace human systems since it can recover faces from the furthest distances, display the name of the offender, and sound an alert on the DICA web app's output screen. The DICA system is a working prototype of a system that might be used in the criminal investigative process in Nigeria.