利用多级渐进 V-Net 增强罪犯面部图像,通过像素修复实现人脸识别

S. S. Beulah Benslet, P. Parameswari
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引用次数: 0

摘要

简介:现代社会的犯罪活动呈指数级增长,导致人们对安全问题极为关注。 人脸识别技术(FRT)是一种功能强大的计算机系统,越来越多地用于识别和匹配人脸,以破案和调查:由于图像清晰度差、像素嘈杂,对罪犯面孔的检测往往不准确。因此,需要采用图像增强技术来更准确地识别罪犯。方法:用于恢复图像的卷积神经网络(CNN)被称为 MPRV-Net,它分为三个阶段,在恢复图像的同时,在空间数据和高度上下文化的信息之间实现了难以达到的平衡。所建议的网络具有重要意义,因为它使用单一架构消除了所有三种类型的偏差。结论:因此,所提出的多级渐进 V-Net 模型能有效改善罪犯面部图像,从而更准确地检测出公共场所的罪犯。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancement of Criminal Facial Image Using Multistage Progressive V-Net for Facial Recognition by Pixel Restoration
INTRODUCTION: Criminal activity is expanding exponentially in modern society, which leads towards a great concern about security issues.  Facial recognition technology (FRT) is a powerful computer-based system that increasingly being used for recognize and match faces to solve crimes and investigations.OBJECTIVES: Due to poor image clarity and noisy pixels, the detection of criminal faces tends to be inaccurate. Hence, image enhancement techniques are required to recognize criminals with better accuracy. In the proposed model, a multistage progressive V-net based image quality enhancing technique is employed to improve accuracy.METHODS: The Convolutional Neural Network (CNN) for restoring images called MPRV-Net has three stages for a difficult balance between spatial data and highly contextualized information for image restoration tasks while recovering images.RESULTS: For image restoration tasks, including denoising, deblurring, and deraining, MPRV-Net has provided considerable performance benefits on a number of datasets. The suggested network is significant as it eliminates all three types of deviations using a single architecture. The proposed model's performance is tested using performance metrics such as accuracy, precision, recall, and specificity, obtaining 94%, 96%, 93%, and 95%.CONCLUSION: Thus, the proposed Multistage Progressive V-Net model for effectively improves the criminal Facial image for detecting criminals in public places with greater accuracy.
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