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Deep Learning Applied to Capacity Control in Commercial Establishments in Times of COVID-19

机译:深度学习在COVID-19时代应用于商业机构的容量控制

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This research paper was developed to implement an intelligent solution for This research paper was developed to implement an intelligent solution for the control of the capacity of commercial establishments in times of COVID-19 using Yolo, which is a Convolutional Neural Network and a Deep Learning algorithm. For the application of this solution, a COCO dataset was used that is used in the implementation of Yolov4. A computer module was developed for the analysis of the flow of people, using Python 3.7, which mainly consists of an algorithm that determines the path and direction (movement) of a person, and this is evaluated in a limit o threshold that acts as the entrance and exit door of the main establishment; that is, it determines whether a person leaves or enters according to their route and direction. The results indicate that it is possible to implement this solution as an additional monitoring module for use as capacity control and with this offer a complete alternative to the owners of commercial establishments. In this way, it seeks to control the maximum capacity allowed due to the pandemic generated by the Sars-Cov.2 virus. The tests were conducted using an AMD Ryzen 7 3750H processor and an NVIDIA GTX 1660 TI video card. The possibility of determining whether the number of people who entered less than the number of people who left exceeds the maximum allowed by the pandemic on 50% of the real capacity.
机译:本研究论文的目的是实现针对该问题的智能解决方案。本研究论文的目的是针对使用卷积神经网络和深度学习算法的Yolo在COVID-19时期对商业机构的能力进行控制的智能解决方案。 。对于此解决方案的应用,使用了在Yolov4的实现中使用的COCO数据集。使用Python 3.7开发了一个用于分析人员流动的计算机模块,该模块主要由确定人员的路径和方向(运动)的算法组成,并在限制为o的阈值中进行评估。主要机构的出入口门;也就是说,它根据一个人的路线和方向来确定它是离开还是进入。结果表明,可以将该解决方案作为附加的监视模块实施,以用作容量控制,并以此为商业机构的所有者提供完全的替代方案。这样,它试图控制由于Sars-Cov.2病毒引起的大流行而允许的最大容量。测试是使用AMD Ryzen 7 3750H处理器和NVIDIA GTX 1660 TI视频卡进行的。确定进入的人数少于离开的人数的可能性是否超过大流行所允许的最大实际容量的50%。

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