Abstract
AbstractFires cause severe damage to the ecological environment and threaten human life and property. Although the traditional convolutional neural network method effectively detects large-area fires, it cannot capture small fires in complex areas through a limited receptive field. At the same time, fires can change at any time due to the influence of wind direction, which challenges fire prevention and control personnel. To solve these problems, a novel dynamic adaptive distribution transformer detection framework is proposed to help firefighters and researchers develop optimal fire management strategies. On the one hand, this framework embeds a context aggregation layer with a masking strategy in the feature extractor to improve the representation of low-level and salient features. The masking strategy can reduce irrelevant information and improve network generalization. On the other hand, designed a dynamic adaptive direction conversion function and sample allocation strategy to fully use adaptive point representation while achieving accurate positioning and classification of fires and screening out representative fire samples in complex backgrounds. In addition, to prevent the network from being limited to the local optimum and discrete points in the sample from causing severe interference to the overall performance, designed a weighted loss function with spatial constraints to optimize the network and penalize the discrete points in the sample. The mAP in the three baseline data sets of FireDets, WildFurgFires, and FireAndSmokes are 0.871, 0.909, and 0.955, respectively. The experimental results are significantly better than other detection methods, which proves that the proposed method has good robustness and detection performance.
Funder
Fundamental Research Funds for the Central Universities
Publisher
Springer Science and Business Media LLC
Reference43 articles.
1. Khondaker A, Khandaker A, Uddin J (2020) Computer vision-based early fire detection using enhanced chromatic segmentation and optical flow analysis technique. Int Arab J Inf Technol 17(6):947–953
2. Yuan C, Liu Z, Zhang Y (20115) UAV-based forest fire detection and tracking using image processing techniques. In: 2015 international conference on unmanned aircraft systems (ICUAS). IEEE, pp 639–643
3. Poobalan K, Liew SC (2015) Fire detection algorithm using image processing techniques. In: Proceedings of the 3rd international conference on artificial intelligence and computer science (AICS2015), pp 160–168
4. Zhao J, Zhang Z, Han S et al (2011) SVM based forest fire detection using static and dynamic features. Comput Sci Inf Syst 8(3):821–841
5. Zivkovic M, Bacanin N, Antonijevic M et al (2022) Hybrid CNN and XGBoost model tuned by modified arithmetic optimization algorithm for COVID-19 early diagnostics from X-ray images. Electronics 11(22):3798