Early Wildfire Smoke Detection Using Different YOLO Models

Author:

Al-Smadi Yazan1ORCID,Alauthman Mohammad2ORCID,Al-Qerem Ahmad1ORCID,Aldweesh Amjad3ORCID,Quaddoura Ruzayn1,Aburub Faisal4,Mansour Khalid5,Alhmiedat Tareq67ORCID

Affiliation:

1. Computer Science Department, Faculty of Information Technology, Zarqa University, Zarqa 13110, Jordan

2. Department of Information Security, Faculty of Information Technology, University of Petra, Amman 11196, Jordan

3. College of Computing and Information Technology, Shaqra University, Riyadh 11911, Saudi Arabia

4. Department of Business Intelligence and Data Analytics, University of Petra, Amman 11196, Jordan

5. Faculty of IT, Kingdom University, Riffa 40434, Bahrain

6. Artificial Intelligence and Sensing Technologies (AIST), University of Tabuk, Tabuk 71491, Saudi Arabia

7. Faculty of Computers & Information Technology, University of Tabuk, Tabuk 71491, Saudi Arabia

Abstract

Forest fires are a serious ecological concern, and smoke is an early warning indicator. Early smoke images barely capture a tiny portion of the total smoke. Because of the irregular nature of smoke’s dispersion and the dynamic nature of the surrounding environment, smoke identification is complicated by minor pixel-based traits. This study presents a new framework that decreases the sensitivity of various YOLO detection models. Additionally, we compare the detection performance and speed of different YOLO models such as YOLOv3, YOLOv5, and YOLOv7 with prior ones such as Fast R-CNN and Faster R-CNN. Moreover, we follow the use of a collected dataset that describes three distinct detection areas, namely close, medium, and far distance, to identify the detection model’s ability to recognize smoke targets correctly. Our model outperforms the gold-standard detection method on a multi-oriented dataset for detecting forest smoke by an mAP accuracy of 96.8% at an IoU of 0.5 using YOLOv5x. Additionally, the findings of the study show an extensive improvement in detection accuracy using several data-augmentation techniques. Moreover, YOLOv7 outperforms YOLOv3 with an mAP accuracy of 95%, compared to 94.8% using an SGD optimizer. Extensive research shows that the suggested method achieves significantly better results than the most advanced object-detection algorithms when used on smoke datasets from wildfires, while maintaining a satisfactory performance level in challenging environmental conditions.

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Industrial and Manufacturing Engineering,Control and Optimization,Mechanical Engineering,Computer Science (miscellaneous),Control and Systems Engineering

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