YOLOV3: An advanced solution for real-time object counting

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José Antonio Fuentes Velásquez
Eduardo José Vásquez Flores

Abstract

With the evolution of modernity and the new challenges that it brings, an advanced solution is presented using the YOLOv3 algorithm for counting objects in real time. Which consists of the precise detection and counting of objects in images and videos, which leads to various applications, such as security, logistics, agriculture and quality control. The YOLOv3 algorithm, an object recognition system based on machine learning, which has proven to be an efficient tool in the process of detecting multiple classes of objects with a high processing speed in a single image or frames in videos. In this study, the YOLOv3 algorithm is used to address the object counting problem, taking advantage of its ability to detect and locate objects in an image and provide an accurate count in real time. YOLOv3, the process of training the model and evaluating its performance on different data sets. The experimental results show that the proposed solution offers promising accuracy to object detection and counting, overcoming the limitations of traditional approaches. This study contributes to the advancement of computer vision and provides an effective tool for applications that require real-time object counting.

Article Details

How to Cite
Fuentes Velásquez, J. A. ., & Vásquez Flores, E. J. . (2024). YOLOV3: An advanced solution for real-time object counting. Inicio, 2(14), 1-9. Retrieved from https://revista.univo.edu.sv/index.php/investigacion/article/view/68
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Artículos
Author Biographies

José Antonio Fuentes Velásquez, Universidad de Oriente

Licenciado en Matemática

Eduardo José Vásquez Flores, Universidad de Oriente

Ingeniero en Sistemas Informáticos.