Enhancing Object Detection Techniques Through Transfer Learning and Pre-trained Models

Authors

  • Ashwaq Katham Mtashre College of Health and Medical Technologies Kufa | Al-Furat Al-Awsat Technical University | Iraq
  • Dhakaa Mohsin Kareem Technical Institute Suwaira |Middle Technical University | Iraq
  • Zainab AbdAlAbbas Muhsen Babylon Technical Institute | AL-Furat Al-Awsat University | Iraq

Keywords:

pre-trained models
VGG
ResNet
Deep Learning
convolutional neural networks

Abstract

This study aims to enhance object detection systems by comparing pre-trained classification models with custom-trained ones, focusing on task-based deep learning for image recognition. The problem addressed is the challenge of accurately detecting and classifying objects in complex environments where traditional recognition systems may fall short. The proposed solution leverages transfer learning utilizing pre-trained models like ResNet or VGGNet as feature extractors. By exploiting the convolutional layers of these models, the system captures common features for specific detection tasks. Experimental analyses on benchmark datasets confirm the efficacy of this approach, demonstrating improved detection accuracy and efficiency in various scenarios. Specifically, FasterRCNN achieves a mean Average Precision (mAP) of 78% on synthetic datasets and 74% on real datasets at an Intersection over Union (IoU) threshold of 0.5. This indicates FasterRCNN's superior performance in terms of accuracy, making it a strong candidate for applications requiring high detection accuracy.

Author Biographies

Ashwaq Katham Mtashre, College of Health and Medical Technologies Kufa | Al-Furat Al-Awsat Technical University | Iraq

College of Health and Medical Technologies Kufa | Al-Furat Al-Awsat Technical University | Iraq

Dhakaa Mohsin Kareem, Technical Institute Suwaira |Middle Technical University | Iraq

Technical Institute Suwaira |Middle Technical University | Iraq

Zainab AbdAlAbbas Muhsen, Babylon Technical Institute | AL-Furat Al-Awsat University | Iraq

Babylon Technical Institute | AL-Furat Al-Awsat University | Iraq

Downloads

Published

2024-09-30

How to Cite

1.
Enhancing Object Detection Techniques Through Transfer Learning and Pre-trained Models. JESIT [Internet]. 2024 Sep. 30 [cited 2024 Nov. 21];3(8):39-45. Available from: https://journals.ajsrp.com/index.php/jesit/article/view/8106

Issue

Section

Content

How to Cite

1.
Enhancing Object Detection Techniques Through Transfer Learning and Pre-trained Models. JESIT [Internet]. 2024 Sep. 30 [cited 2024 Nov. 21];3(8):39-45. Available from: https://journals.ajsrp.com/index.php/jesit/article/view/8106