• Spacecraft Recovery & Remote Sensing
  • Vol. 45, Issue 5, 147 (2024)
Wenzhuo WANG1, Chenglong MA2, Guanlin WANG1, Yiming ZHANG1..., Fangxiong TAN2,*, Xu HAN3 and Lei WU3|Show fewer author(s)
Author Affiliations
  • 1State Grid Gansu Electric Power Company, Lanzhou 730000, China
  • 2State Grid Gansu Electric Power Company Jiuquan Power Supply Company, Jiuquan 735000, China
  • 3Beijing Deep Blue Space Remote Sensing Technology Co., Ltd., Beijing 100020, China
  • show less
    DOI: 10.3969/j.issn.1009-8518.2024.05.014 Cite this Article
    Wenzhuo WANG, Chenglong MA, Guanlin WANG, Yiming ZHANG, Fangxiong TAN, Xu HAN, Lei WU. Real-Time Fire Detection by Cascading Traditional Approaches with Deep Learning[J]. Spacecraft Recovery & Remote Sensing, 2024, 45(5): 147 Copy Citation Text show less

    Abstract

    Aiming at the problem of insufficient accuracy and timeliness of wildfire monitoring, a near real-time fire monitoring algorithm using a Multichannel Convolutional Neural Network (MCNN) with a cascaded traditional method is proposed. Firstly, by combining the OTSU method and the spatial context method, potential fire points are identified by exploiting the differences in background brightness temperature spatial information. Secondly, using the idea of ensemble learning, three convolutional neural network channels are constructed. Each channel takes different combinations of spectral information, spatial context information, and temporal-geographical information features as input. The optimal weights for each channel are obtained by using the particle swarm optimization algorithm to search for the best weights, and the joint prediction probabilities of fire points from the three channels are obtained, achieving accurate fire point recognition. The results show that compared to a single-channel Convolutional Neural Network (CNN) model, the MCNN achieves a precision of 0.88 and reduces the omission rate by 0.16. Furthermore, compared to the Japan Meteorological Agency’s official product, the omission rate is reduced by 0.06. In addition, the highest runtime of the model in the experiment is 268 seconds. Therefore, the MCNN model proposed in this paper can achieve high-precision near real-time fire point detection, providing a scientific basis for emergency fire response.
    Wenzhuo WANG, Chenglong MA, Guanlin WANG, Yiming ZHANG, Fangxiong TAN, Xu HAN, Lei WU. Real-Time Fire Detection by Cascading Traditional Approaches with Deep Learning[J]. Spacecraft Recovery & Remote Sensing, 2024, 45(5): 147
    Download Citation