Implementation of a Multitudinous Face Recognition using YOLO.V3

M. Suman Menon, Anju George, N. Aswathy
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引用次数: 2

Abstract

Face recognition is one of the most functional research in present scenario, with many practical and commercial applications including identification, access control, forensics, medical care, human-computer interactions, security, etc. Face recognition technique is rapidly becoming the mainstay of state of the art technological security solution. One of the crucial applications of face recognition in the current scenario is linked with security. Identifying people from a crowd or a group of people require an exceptional algorithm. One of the most arduous tasks about the existing face recognition system is the processing or prediction time. The current systems focus on accuracy than speed, which leads to an increase in the detection time. There are several techniques in machine learning and deep learning. But deep learning is preferred more than machine learning for detection and recognition applications because of the large availability of data. An algorithm for fast real-time object detecting and recognizing application is required. YOLO (you only look once) is a single shot deep learning object detection algorithm. In this work, the working of the YOLO algorithm and implementing multiple face recognition using YOLO version 3 is explained. A custom dataset is created from taken from Kaggle and google. At the time of testing the model, a processing speed of 30 ms was obtained.
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基于YOLO的海量人脸识别实现。V3
人脸识别是目前最具功能性的研究之一,在身份识别、访问控制、取证、医疗、人机交互、安全等领域有着广泛的实际和商业应用。人脸识别技术正迅速成为最先进的安全技术解决方案的支柱。在当前的场景中,人脸识别的关键应用之一与安全有关。从人群或一群人中识别人需要一种特殊的算法。现有的人脸识别系统最艰巨的任务之一是处理或预测时间。目前的系统更注重精度而不是速度,这导致了检测时间的增加。在机器学习和深度学习中有几种技术。但在检测和识别应用中,由于数据的大量可用性,深度学习比机器学习更受欢迎。需要一种快速实时的目标检测和识别算法。YOLO(你只看一次)是一个单镜头深度学习对象检测算法。本文介绍了YOLO算法的工作原理以及使用YOLO version 3实现多人脸识别。一个自定义数据集是从Kaggle和google中获取的。在对模型进行测试时,得到的处理速度为30 ms。
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