The Role of Faster R-CNN Algorithm in the Internet of Things to Detect Mask Wearing: The Endemic Preparations

Authors

  • Al-Khowarizmi Al-Khowarizmi Universitas Muhammadiyah Sumatera Utara
  • Marah Doly Nasution Universitas Muhammadiyah Sumatera Utara
  • Romi Fadillah Rahmat Universitas Muhammadiyah Sumatera Utara
  • Arif Ridho Lubis Politeknik Negeri Medan
  • Muharman Lubis Telkom University

Abstract

Faster R-CNN is an algorithm development that continuously starts from CNN then R-CNN and Faster R-CNN. The development of the algorithm is needed to test whether the heuristic algorithm has optimal provisions. Broadly speaking, faster R-CNN is included in algorithms that are able to solve neural network and machine learning problems to detect a moving object. One of the moving objects in the current phenomenon is the use of masks. Where various countries in the world have issued endemic orations after the Covid 19 pandemic occurred. Detection tool has been prepared that has been tested at the mandatory mask door, namely for mask users. In this paper, the role of the Faster R-CNN algorithm has been carried out to detect masks poured on Internet of Thinks (IoT) devices to automatically open doors for standard mask users. From the results received that testing on the detection of moving mask objects when used reaches 100% optimal at a distance of 0.5 to 1 meter and 95% at a distance of 1.5 to 2 meters so that the process of sending detection signals to IoT devices can be carried out at a distance of 1 meter at the position mask users to automatic doors

Author Biography

Al-Khowarizmi Al-Khowarizmi, Universitas Muhammadiyah Sumatera Utara

Department of Information Technology

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Published

2023-10-28

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Section

Applied Informatics