Sistem Penghitung Jumlah Produk Industri Berbasis ESP32-CAM Dengan Deteksi Real Time

Authors

  • Lindung KA Sihotang Universitas Pembangunan Panca Budi
  • Beni Satria Universitas Pembangunan Panca Budi
  • Ahmad Dani Universitas Pembangunan Panca Budi

DOI:

https://doi.org/10.55606/jutiti.v6i1.6558

Keywords:

Computer Vision, ESP32-CAM, Internet of Things, Product Counting, Tiny-YOLOv3

Abstract

This study develops a real-time industrial product counting system using the ESP32-CAM module to address efficiency and accuracy challenges in production automation. The main problem investigated is the reliance on manual counting, which is prone to errors, and the use of expensive device-based systems that are less accessible to small and medium-sized industries. The research aims to design a low-cost system capable of accurately and rapidly detecting and counting products, integrated with an Internet of Things (IoT) platform for real-time notifications. The methods used include the implementation of the Tiny You Only Look Once version 3 (Tiny-YOLOv3) algorithm for object detection on the ESP32-CAM, image preprocessing to enhance detection quality, and integration with Telegram to send product count notifications. Testing was conducted in an industrial simulation environment with varying product quantities (5, 10, 20, 50) and lighting conditions (optimal: 500–700 lux; low: 200–300 lux). The results showed the highest detection accuracy of 92.3% under optimal lighting for 5 products, an average processing time of under 1 second for up to 20 products, and notification reliability above 93%. This system offers a cost-effective and scalable solution, although accuracy decreases under low lighting and larger product quantities. The research contributes to industrial automation through affordable technology.

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Published

2026-03-18

How to Cite

Lindung KA Sihotang, Beni Satria, & Ahmad Dani. (2026). Sistem Penghitung Jumlah Produk Industri Berbasis ESP32-CAM Dengan Deteksi Real Time. Jurnal Teknik Informatika Dan Teknologi Informasi, 6(1), 36–49. https://doi.org/10.55606/jutiti.v6i1.6558

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