Yupeng Wang, Yongli Wang, Can Xu, Xiaoli Wang, Yong Zhang
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Computer vision-driven forest wildfire and smoke recognition via IoT drone cameras
Forest wildfires often lead to significant casualties and economic losses, making early detection crucial for prevention and control. Internet of Things connected cameras mounted on drone provide wide monitoring coverage and flexibility, while computer vision technology enhances the accuracy and response time of forest wildfire monitoring. However, the small-scale nature of early wildfire targets and the complexity of the forest environment pose significant challenges to accurately and promptly identify fires. To address challenges such as high false-positive rates and inefficiency in existing methods, we propose a Forest Wildfire and Smoke Recognition Network termed FWSRNet. Firstly, we adopt Vision Transformer, which has shown superior performance in recent traditional classification tasks, as the backbone network. Secondly, to enhance the extraction of subtle differential features, we introduce a self-attention mechanism to guide the network in selecting discriminative image patches and calculating their relationships. Next, we employ a contrastive feature learning strategy to eliminate redundant information, making the model more discriminative. Finally, we construct a target loss function for model prediction. Under various proportions of training and testing dataset allocations, the model exhibits recognition accuracies of 94.82, 95.05, 94.90, and 94.80% for forest fires. The average accuracy of 94.89% surpasses five comparative models, demonstrating the potential of this method in IoT-enhanced aerial forest fire recognition.
期刊介绍:
The wireless communication revolution is bringing fundamental changes to data networking, telecommunication, and is making integrated networks a reality. By freeing the user from the cord, personal communications networks, wireless LAN''s, mobile radio networks and cellular systems, harbor the promise of fully distributed mobile computing and communications, any time, anywhere.
Focusing on the networking and user aspects of the field, Wireless Networks provides a global forum for archival value contributions documenting these fast growing areas of interest. The journal publishes refereed articles dealing with research, experience and management issues of wireless networks. Its aim is to allow the reader to benefit from experience, problems and solutions described.