犯罪识别网络应用程序利用面部识别技术识别和追踪罪犯

V. Shrey Jain, A. Poongodi
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引用次数: 0

摘要

犯罪记录一般包含个人和犯罪的所有信息以及个人照片。为了识别罪犯,需要由目击者进行某种识别。在大多数情况下,记录的图像部分的分辨率或/和质量不尽人意,很难识别人脸。识别可以通过 DNA、眼睛、指纹等不同方式实现。其中一种方法就是人脸识别。由于人脸识别技术是由人工智能驱动的,因此可以在识别罪犯方面提供出色的结果。即使考虑到大多数人在进行非法活动时,都会试图隐藏自己的身份:隐藏自己的脸或用围巾、面具等遮住自己的脸。在这种情况下,人工智能利用深度学习方法来识别个人身份。在本项目中,我们提出了一个犯罪网络(CrimeNet),这是一个供警察局使用的自动犯罪识别系统,利用卷积神经网络算法,将犯罪分类提升为一种更有效、更高效的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Criminal Identification Web App Utilizes Facial Recognition to Identify and Track Criminals
Criminal record generally contains all the information both personal and criminal with the photograph of the person. In order to recognize Criminal, identification of some sort is required, designated by eyewitnesses. In most cases the resolution or/and quality of the recorded image sections is unsatisfactory and is difficult to recognize the face. Recognition can be achieved in various different ways like DNA, eyes, finger print, etc. One of the ways is face identification. Since facial recognition technology is powered by artificial intelligence, it can provide excellent results in identifying criminals. Even considering that most people, when committing an illicit activity, try to hide their identity: hiding their faces or covering their faces with scarves, masks, etc. In such cases, AI uses deep learning methods to identify the individual. In this project, proposed a CrimeNet an automatic criminal identification system for Police Department to enhance and upgrade the criminal classification into a more effective and efficient approach using Convolutional neural network algorithms.
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