Abstract
Counters that keep track of the number of people who enter a building are a useful management tool for keeping everyone who uses it safe and happy. This paper aims to employ the MobileNet-SSD machine learning approach to implement a best practice for visitor counter. The researchers have to build a different scenario test dataset along with the MOT20 dataset to achieve the proposed methodology. Implementing different experiments in single-user, one-one; two-two users; many-two, and multiple users in different walking directions to detect and count shows varied results based on the experiment type. The best achieved by single-user and one-to-one model; both are scored 100% of detecting and calculating for in or out.
Keywords
CNN, Mobilenet-SSD, MobileNet, Object tracking, real-time Object detection, SSD
Article Type
Special Issue Article
Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 International License.
How to Cite this Article
Al Musalhi, Nasser; Al Wahaibi, Ali Mohammed; and Abbas, Mohammed
(2024)
"Implementing Real-time Visitor Counter Using Surveillance Video and MobileNet-SSD Object Detection: The Best Practice,"
Baghdad Science Journal: Vol. 21:
Iss.
5, Article 28.
DOI: https://doi.org/10.21123/bsj.2024.10540