Research on forest fire smoke detection technology based on video region dynamic features

[Objective] Video surveillance is increasingly applied to the early detection of forest fire smoke. The existing video forest fire smoke detection methods are mostly based on pixel extraction of smoke characteristics for analysis and detection, but when the smoke is early or the smoke is far from the camera, the smoke only appears in a small area on the video image. Moreover, the diffusion of smoke is irregular, and the background environment is complex and changeable, resulting in insignificant pixel-based features, which makes it more difficult to automatically detect pixel-based smoke. Based on the principle of visible light video image processing, this paper proposes a forest fire video smoke detection method based on local area image dynamic characteristics to improve the accuracy and sensitivity of forest fire video smoke 收稿日期: 2020−02−23 修回日期: 2020−05−25 基金项目: 中国林业科学研究院基本科研业务费专项(CAFYBB2017ZC001),“948”国家林业局引进项目(2014-4-01)。 第一作者: 刘长春。主要研究方向:地理信息系统技术与应用。Email:lcc175@126.com 地址:100091 北京市海淀区香山路东小府 1号中国 林业科学研究院资源信息研究所。 责任作者: 刘鹏举,博士,副研究员。主要研究方向:林业 GIS应用与开发。Email:liupeng@caf.ac.cn 地址:同上。 本刊网址: http://j.bjfu.edu.cn;http://journal.bjfu.edu.cn 第 43 卷 第 1 期 北 京 林 业 大 学 学 报 Vol. 43,No. 1 2021 年 1 月 JOURNAL OF BEIJING FORESTRY UNIVERSITY Jan. ,2021 detection. [Method] The video images were selected as the research object. One frame per second was taken to generate an image sequence, and the image sequences were divided into multiple levels and different scales; using the principle of image signal-to-noise ratio, we calculated the signal-to-noise ratio of continuous image sequences after blocking; the adaptive threshold was obtained according to the signal-tonoise ratio of the background image, and the image block whose brightness changes in the image sequence to be detected was determined to be the suspected smoke block; the LBP texture feature of the suspected smoke block was extracted, and the support vector machine was used to distinguish the smoke area. [Result] Using the value component of the HSV color space, smoke areas can be effectively extracted. The videos with forest fire smoke were selected to verify the proposed smoke change detection method. The analysis results showed that the method can determine the image block where the smoke occurred and excluded some non-smoke interference factors. [Conclusion] This paper proposes a video forest fire smoke detection technology based on brightness characteristics and LBP texture features of local area, which can accurately locate the smoke occurrence area and exclude some interference factors. The average detection recognition rate reaches more than 92%, which is helpful for real-time forest fire smoke automatic detection and improving the detection rate of forest fire smoke. It has a strong practicality.

[1]  ByoungChul Ko,et al.  Wildfire smoke detection using spatiotemporal bag-of-features of smoke , 2013, 2013 IEEE Workshop on Applications of Computer Vision (WACV).

[2]  Feng Guoh,et al.  Parameter optimizing for Support Vector Machines classification , 2011 .

[3]  Lei Wang,et al.  Detection and Separation of Smoke From Single Image Frames , 2018, IEEE Transactions on Image Processing.

[4]  Nikolaos Grammalidis,et al.  Higher Order Linear Dynamical Systems for Smoke Detection in Video Surveillance Applications , 2017, IEEE Transactions on Circuits and Systems for Video Technology.

[5]  Hongwei Zhao,et al.  Research of Smoke Detection on Visual Saliency Method , 2014, J. Multim..

[6]  S. S. Vinsley,et al.  Multi Feature Analysis of Smoke in YUV Color Space for Early Forest Fire Detection , 2016, Fire Technology.

[7]  Matti Pietikäinen,et al.  Multiresolution Gray-Scale and Rotation Invariant Texture Classification with Local Binary Patterns , 2002, IEEE Trans. Pattern Anal. Mach. Intell..

[8]  Feiniu Yuan,et al.  Video-based smoke detection with histogram sequence of LBP and LBPV pyramids , 2011 .

[9]  Yang Qiu-xi Forest Fire Smoke Recognition Based on Local Binary Patterns and Sparse Representation , 2014 .

[10]  Feiniu Yuan,et al.  Holistic learning-based high-order feature descriptor for smoke recognition , 2019, Int. J. Wavelets Multiresolution Inf. Process..

[11]  Matti Pietikäinen,et al.  A comparative study of texture measures with classification based on featured distributions , 1996, Pattern Recognit..

[12]  ByoungChul Ko,et al.  Wildfire smoke detection using temporospatial features and random forest classifiers , 2012 .