Viana Safe: Smart Safe and Secure Platform Based on CCTV Analytics in Pandemic Covid-19 Situation Use Case Railway Station

I. A. Dahlan, F. Hidayat, S. Supangkat, Fetty Fitriyanti Lubis
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引用次数: 6

Abstract

Nowadays, the railway industry has a public transport in a key position where it must be able to face the challenge of ensuring the safety and quality of service regarding health's safety in a pandemic situation. Public transport as a center of people's mobility must be safe to ensure visitors travel during the pandemic. This must be taken because the impact of COVID-19 has spread to almost all sectors and has also caused health facilities to experience the highest level of crisis. Many precautions need to be taken to reduce the spread of this disease where health care protocols must be adhered to with technology to control and manage smart railways resilience in the face of a pandemic. This paper proposes to implement CCTV analytics as a platform to process real-time data with a study case in Bandung Railway Station into knowledge displayed in a Viana Safe dashboard with accuracy 93.95% result on mask detection, social distancing to ensure the COVID-19 protocol with a real time speed of processing with NVIDIA 2080 Ti around of 25 FPS, 30 FPS of visitor counting and fever detection to screen the health status of visitor with accuracy 0.1-0.5'C of face temperature. It will send an early warning notification if the system detects the anomaly detection COVID-19 protocol violation.
Viana Safe:基于CCTV分析的新型冠状病毒疫情智能保险箱平台用例火车站
如今,铁路行业的公共交通处于关键地位,它必须能够面对在大流行情况下确保健康安全的安全和服务质量的挑战。公共交通作为人员流动的中心,在疫情期间必须确保游客的出行安全。必须采取这一措施,因为COVID-19的影响已蔓延到几乎所有部门,并使卫生机构经历了最严重的危机。需要采取许多预防措施来减少这种疾病的传播,必须遵守卫生保健规程,并采用技术来控制和管理面对大流行的智能铁路复原力。本文拟以CCTV分析为平台,以万隆火车站为研究案例,将实时数据处理为Viana Safe仪表板上显示的知识,口罩检测结果准确率为93.95%,社交距离确保COVID-19协议,NVIDIA 2080 Ti实时处理速度为25 FPS左右,游客计数为30 FPS,发烧检测筛查游客健康状况,面部温度精度为0.1-0.5℃。当系统检测到异常检测COVID-19协议违规时,系统会发出预警通知。
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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