Evaluation of Single and Dual image Object Detection through Image Segmentation Using ResNet18 in Robotic Vision Applications
Journal article
Authors/Editors
Strategic Research Themes
Publication Details
Author list: Phichitphon Chotikunnan, Tasawan Puttasakul, Rawiphon Chotikunnan, Benjamas Panomruttanarug, Manas Sangworasil, Anuchart Srisiriwat
Publication year: 2023
Volume number: 4
Issue number: 3
Start page: 263
End page: 277
Number of pages: 15
ISSN: 2715-5056
eISSN: 2715-5072
URL: https://journal.umy.ac.id/index.php/jrc/article/view/17932
Abstract
This study presents a method for enhancing the accuracy of object detection in industrial automation applications using ResNet18-based image segmentation. The objective is to extract object images from the background image accurately and efficiently. The study includes three experiments, RGB to grayscale conversion, single image processing, and dual image processing. The results of the experiments show that dual image processing is superior to both RGB to grayscale conversion and single image processing techniques in accurately identifying object edges, determining CG values, and cutting background images and gripper heads. The program achieved a 100% success rate for objects located in the workpiece tray, while also identifying the color and shape of the object using ResNet-18. However, single image processing may have advantages in certain scenarios with sufficient image information and favorable lighting conditions. Both methods have limitations, and future research could focus on further improvements and optimization of these methods, including separating objects into boxes of each type and converting image coordinate data into robot working area coordinates. Overall, this study provides valuable insights into the strengths and limitations of different object recognition techniques for industrial automation applications.
Keywords
No matching items found.