Integration Of Open CV LBF Model To Detect Masks In Health Protocol Surveillance Systems

Yovi Litanianda, Moh Bhanu Setyawan, Adi Fajaryanto C, Ismail Abdurrozzaq Z, Charisma Wahyu Aditya
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Abstract

The Corona Viruses Diseases pandemic that was rife in early 2020 and hit many countries caused discipline to be applied to health protocols. The prevention of physical contact between humans gave rise to new traditions in aspects of human life. Almost all public facilities in Indonesia require visitors to wear masks as a means of preventing exposure to viruses in the air. However, this advice is often ignored by some people. In addition to endangering many people, this condition also makes public facility managers need extra resources in the form of time, energy and costs to ensure this health protocol is implemented. The existence of these problems triggers the emergence of innovations to present a system that provides assurance and convenience in ensuring compliance with health protocols for the use of masks through creative and effective methods. This method is done by utilizing CCTV cameras or webcams at the entrance equipped with an Artificial Intelligence program designed to be able to detect the use of masks on visitors to public facilities, and without the need for other sensors. The detection system is built on the concept of facial biometrics and utilizes the OpenCV LBF model to detector landmarks on a person's face. Based on tests conducted through several scenario, it can be said that the open CV LBF model successfully identified the use of masks within 35 seconds, increasing the reading distance to 2 meters making the process longer. In addition, in indoor lighting conditions, the system experienced 1 detection error with a process time of 18 seconds, while for well-light outdoor conditions the system managed to detect all objects within 10 seconds.
整合开放式 CV LBF 模型,在健康协议监控系统中检测面具
2020 年初,科罗娜病毒疾病大流行,许多国家深受其害。防止人与人之间的身体接触在人类生活的方方面面都产生了新的传统。印度尼西亚几乎所有的公共设施都要求游客佩戴口罩,以防止接触空气中的病毒。然而,一些人往往忽视了这一建议。这种情况除了危及许多人的健康外,还使得公共设施管理者需要额外的时间、精力和成本等资源来确保这一卫生规程得到执行。这些问题的存在引发了创新的出现,提出了一种系统,通过创新和有效的方法,为确保遵守口罩使用卫生规范提供保证和便利。这种方法是利用入口处的闭路电视摄像机或网络摄像头,并配备人工智能程序,旨在能够检测公共设施访客使用口罩的情况,而无需使用其他传感器。该检测系统基于面部生物识别的概念,利用 OpenCV LBF 模型来检测人脸上的地标。根据在多个场景下进行的测试,可以说开放式 CV LBF 模型在 35 秒内成功识别了口罩的使用,而将读取距离增加到 2 米则会延长这一过程。此外,在室内照明条件下,系统出现了 1 次检测错误,检测时间为 18 秒,而在室外光线充足的条件下,系统能在 10 秒内检测到所有物体。
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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