Affiliation:
1. School of Computer Science, Hubei University of Technology, Wuhan 430068, China
Abstract
Given the limited computing capabilities of UAV terminal equipment, there is a challenge in balancing the accuracy and computational cost when deploying the target detection model for forest fire detection on the UAV. Additionally, the fire targets photographed by the UAV are small and prone to misdetection and omission during detection. This paper proposes a lightweight, small target detection model, FL-YOLOv7, based on YOLOv7. First, we designed a light module, C3GhostV2, to replace the feature extraction module in YOLOv7. Simultaneously, we used the Ghost module to replace some of the standard convolution layers in the backbone network, accelerating inference speed and reducing model parameters. Secondly, we introduced the Parameter-Free Attention (SimAm) attention mechanism to highlight the features of smoke and fire targets and suppress background interference, improving the model’s representation and generalization performance without increasing network parameters. Finally, we incorporated the Adaptive Spatial Feature Fusion (ASFF) module to address the model’s weak small target detection capability and use the loss function with dynamically adjustable sample weights (WIoU) to weaken the impact of low-quality or complex samples and improve the model’s overall performance. Experimental results show that FL-YOLOv7 reduces the parameter count by 27% compared to the YOLOv7 model while improving 2.9% mAP50small and 24.4 frames per second in FPS, demonstrating the effectiveness and superiority of our model in small target detection, as well as its real-time and reliability in forest fire scenarios.
Funder
National Natural Science Foundation of China
Science and Technology Research Project of the Education Department of Hubei Province
Reference39 articles.
1. Impact and contribution of forest in mitigating global climate change;Sahoo;Des. Eng.,2021
2. Fire sensing technologies: A review;Gaur;IEEE Sens. J.,2019
3. Akhloufi, M.A., Couturier, A., and Castro, N.A. (2021). Unmanned aerial vehicles for wildland fires: Sensing, perception, cooperation and assistance. Drones, 5.
4. Liu, W., Yang, Y., and Hao, J. (2022, January 27–29). Design and research of a new energy-saving UAV for forest fire detection. Proceedings of the 2022 IEEE 2nd International Conference on Electronic Technology, Communication and Information (ICETCI), Changchun, China.
5. Potential of UAV Application for Forest Fire Detection;Muid;Proceedings of the Journal of Physics: Conference Series,2022
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