Abstract

The target detection of smoke through remote sensing images obtained by means of unmanned aerial vehicles (UAVs) can be effective for monitoring early forest fires. However, smoke targets in UAV images are often small and difficult to detect accurately. In this paper, we use YOLOX-L as a baseline and propose a forest smoke detection network based on the parallel spatial domain attention mechanism and a small-scale transformer feature pyramid network (PDAM–STPNNet). First, to enhance the proportion of small forest fire smoke targets in the dataset, we use component stitching data enhancement to generate small forest fire smoke target images in a scaled collage. Then, to fully extract the texture features of smoke, we propose a parallel spatial domain attention mechanism (PDAM) to consider the local and global textures of smoke with symmetry. Finally, we propose a small-scale transformer feature pyramid network (STPN), which uses the transformer encoder to replace all CSP_2 blocks in turn on top of YOLOX-L’s FPN, effectively improving the model’s ability to extract small-target smoke. We validated the effectiveness of our model with recourse to a home-made dataset, the Wildfire Observers and Smoke Recognition Homepage, and the Bowfire dataset. The experiments show that our method has a better detection capability than previous methods.

Highlights

  • Forest fires can cause widespread forest mortality, bringing huge losses to forest ecological resources and the social economy, and serious forest fires can even lead to human casualties [1,2]

  • Smoke areas are larger than flame areas, and fires can be covered by smoke, making monitoring smoke an effective means of conducting early forest fire monitoring [5]

  • This paper presents a unmanned aerial vehicles (UAVs) forest fire monitoring system based on Parallel Spatial Domain Attention Mechanism (PDAM)–STPNNet which detects smoke from images returned by UAVs in real-time to determine fire conditions

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Summary

Introduction

Forest fires can cause widespread forest mortality, bringing huge losses to forest ecological resources and the social economy, and serious forest fires can even lead to human casualties [1,2]. In order to solve the problems of the low accuracy of small target smoke monitoring and the inadequate extraction of smoke features in actual forest fire smoke monitoring tasks, and to improve the detection effectiveness of the model for the small targets presented by forest fire smoke, this paper proposes a PDAM–STPNNet-based method for detecting forest fire smoke targets under UAV aerial photography, taking into account both speed and accuracy, and using YOLOX-L with a moderate model size as the benchmark network. In order to enhance the detection of small targets of forest fire smoke, we use component stitching data enhancement to emphasise the differences between the features of different tatrhgeetssminoktheecaimptaugreesdabnydtthoebUaAlaVn’csectahme eprraopuosurtaiollny ocof rtarersgpeotsnodfsdtoiffsemreanltl tsaizrgesetisn. Where It+1 denotes the iteration, Ic denotes the use of a collage, I denotes the use of the original image, τ denotes the set threshold, and rst denotes the percentage of loss caused by the small target in the current iteration

PDAM–STPNNet
UAV Forest Fire Monitoring System
Dataset Acquisition
Experimental Environment
Experimental Setup
Comparison with YOLOX-L
Method
Ablation Experiments with PDAM–STPNNet
Comparison of Visualisation Results
Model Performance Comparison on Public Datasets
Wildfire Observers and Smoke Recognition Homepage
Bowfire Dataset
Practical Application Tests
C class
Application and Future Work Directions
Advantages of the Method in This Paper
Findings
Analysis and Outlook
Full Text
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