Detection and Segmentation of Power Line Fires in Videos

Poor vegetation management around power lines can cause severe fires that lead to tremendous economic losses, environmental degradation, and fatalities. The early discovery of a fire's presence is the key to avoiding catastrophic damages. In this paper, we propose a hybrid fire detection framework based on a deep convolutional neural network (CNN) and a pixel-based fire detector to automatically detect both the presence of fire and its scale and position information. The pre-trained deep CNN serve as a binary classifier to detect the presence of fire. The pixel-based fire detector is designed to find the fire pixels in the video frames, which indicate the scale and location of the fire. Case studies are carried out on six real-world videos to validate the proposed framework. It is shown that the proposed approach can effectively detect fire and locate the fire pixels in the testing fire videos.

[1]  Jimmy Ba,et al.  Adam: A Method for Stochastic Optimization , 2014, ICLR.

[2]  Moulay A. Akhloufi,et al.  Automatic fire pixel detection using image processing: a comparative analysis of rule-based and machine learning-based methods , 2016, Signal Image Video Process..

[3]  Mohamed Elhoseny,et al.  Efficient Fire Detection for Uncertain Surveillance Environment , 2019, IEEE Transactions on Industrial Informatics.

[4]  Sung Wook Baik,et al.  Convolutional Neural Networks Based Fire Detection in Surveillance Videos , 2018, IEEE Access.

[5]  A. Enis Çetin,et al.  Computer vision based method for real-time fire and flame detection , 2006, Pattern Recognit. Lett..

[6]  Azriel Rosenfeld,et al.  Computer Vision , 1988, Adv. Comput..

[7]  Zhengguang Xu,et al.  Automatic Fire Smoke Detection Based on Image Visual Features , 2007, 2007 International Conference on Computational Intelligence and Security Workshops (CISW 2007).

[8]  A. Agrawal,et al.  Schlieren analysis of an oscillating gas-jet diffusion flame , 1999 .

[9]  Steven Verstockt,et al.  Video fire detection - Review , 2013, Digit. Signal Process..

[10]  Z. Zivkovic Improved adaptive Gaussian mixture model for background subtraction , 2004, ICPR 2004.

[11]  Ross B. Girshick,et al.  Mask R-CNN , 2017, 1703.06870.

[12]  Ferdinand van der Heijden,et al.  Efficient adaptive density estimation per image pixel for the task of background subtraction , 2006, Pattern Recognit. Lett..

[13]  Jian Sun,et al.  Deep Residual Learning for Image Recognition , 2015, 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).

[14]  Ole-Christoffer Granmo,et al.  Deep Convolutional Neural Networks for Fire Detection in Images , 2017, EANN.