基于监督学习的智能自动门系统

M. Kiru, B. Belaton, S. Mohamad, Gana Usman, Abdullahi Aminu Kazaure
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引用次数: 5

摘要

自动推拉门在全球商业和非商业环境中的广泛采用,使得提高其效率、安全性和操作模式成为必要。自动门通过传感器感应到接近的人,从而进入或走出建筑物。但是,它没有直觉来理解何时根据年龄限制不允许一个人(例如儿童)外出。为了解决这个问题,研究人员提出了各种解决方案,从使用模糊逻辑到基于规则的方法,使自动门比以前的自动门更好。在这项研究中,提出了一种基于人工智能的自动门系统,该系统使用有监督的机器学习方法来训练基于人体测量的分类器。我们对不同分类器的评估表明,SVM能够正确分类实例,同时获得约88.9%的f分。因此,所提出的方法有望提高自动门的安全性,从而使自动门更加智能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Automatic Door System based on Supervised Learning
The widespread adoption of automatic sliding doors in both commercial and non-commercial environments globally has necessitated the need to improve their efficiency, safety, and mode of operation. The automatic door gives access to go into or outside a building by sensing the approaching individual using sensors. However, it does not have the intuition to understand when a person is not authorized to go outside based on their age limit, for example, children. To address this problem, researchers have proposed solutions ranging from the use of fuzzy logic to rule-based approaches to make automatic doors better than the previous ones. In this study, an AI-based automatic door system is proposed, which uses a supervised machine learning approach to train classifiers using human body measurement. Our evaluation of different classifiers indicates that SVM is capable of classifying the instances correctly while achieving about 88.9% F-score. Thus, the proposed approach is expected to improve the safety of automatic doors, thereby making them smarter and more intelligent.
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