Machine learning models in people detection and identification

IF 0.4 Q4 ENGINEERING, MULTIDISCIPLINARY
Carlos Vicente Niño Rondón, Yesenia Restrepo Chaustre, Sergio Alexander Castro Casadiego
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引用次数: 0

Abstract

Introduction: This article is the result of research entitled "Development of a prototype to optimize access conditions to the SENA-Pescadero using artificial intelligence and open-source tools", developed at the Servicio Nacional de Aprendizaje in 2020.   Problem: How to identify Machine Learning Techniques applied to computer vision processes through a literature review? Objective: Determine the application, as well as advantages and disadvantages of machine learning techniques focused on the detection and identification of people. Methodology: Systematic literature review in 4 high-impact bibliographic and scientific databases, using search filters and information selection criteria. Results: Machine Learning techniques defined as Principal Component Analysis, Weak Label Regularized Local Coordinate Coding, Support Vector Machines, Haar Cascade Classifiers and EigenFaces and FisherFaces, as well as their applicability in detection and identification processes.   Conclusion: The research led to the identification of the main computational intelligence techniques based on machine learning, applied to the detection and identification of people. Their influence was shown in several application cases, but most of them were focused on the implementation and optimization of access control systems, or tasks in which the identification of people was required for the execution of processes. Originality: Through this research, we studied and defined the main machine learning techniques currently used for the detection and identification of people. Limitations: The systematic review is limited to information available in the 4 databases consulted, and the amount of information is variable as articles are deposited in the databases.
人检测和识别中的机器学习模型
引言:这篇文章是题为“使用人工智能和开源工具开发原型以优化SENA Pescadero的访问条件”的研究成果,该研究于2020年在国家服务中心开发。问题:如何通过文献综述确定应用于计算机视觉过程的机器学习技术?目的:确定机器学习技术在检测和识别人方面的应用以及优缺点。方法:使用搜索过滤器和信息选择标准,在4个高影响力的书目和科学数据库中进行系统的文献综述。结果:机器学习技术被定义为主成分分析、弱标签正则化局部坐标编码、支持向量机、Haar级联分类器以及特征面和FisherFaces,以及它们在检测和识别过程中的适用性。结论:本研究引出了基于机器学习的主要计算智能识别技术,应用于人的检测和识别。它们的影响在几个应用案例中得到了体现,但大多数案例都集中在访问控制系统的实施和优化上,或者在执行过程中需要识别人员的任务上。独创性:通过这项研究,我们研究并定义了目前用于检测和识别人的主要机器学习技术。局限性:系统审查仅限于查阅的4个数据库中的可用信息,信息量随着文章存放在数据库中而变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Ingenieria Solidaria
Ingenieria Solidaria ENGINEERING, MULTIDISCIPLINARY-
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