UDK 004.932.2
VIDEO-BASED SMOKE DETECTION USING LOCAL BINARY PATTERNS
A. V. Pyataeva
Siberian State Aerospace University named after academician M. F. Reshetnev 31, Krasnoyarsky Rabochy Av., Krasnoyarsk, 660014, Russian Federation
Smoke detection is particularly important for early warning systems because smoke usually rises before flames arise. Video surveillance systems are widely applied in a variety of fields such as urban scenes and forest scenes. Hence, video-based smoke detection is regarded as an effective and inexpensive way for fire detection in an open space. The existing methods can be classified as histogram-based detection, methods of temporal analysis, smoke detection based on heuristic rules, and hybrid methods. This paper presents an automatic smoke detection method using computer vision and pattern recognition techniques. The method involves texture analysis with rotation and illumination invariant local binary pattern, local ternary pattern, and extended local binary pattern. The novel Local Binary Patterns (LBPs) called as Temporal LBPs were developed. Temporal LBPs are built as 3D structure based on neighbor frames for analysis of dynamic textures. For smoke verification, two different classes of histogram are computed. As a measure of the differences for smoke and non-smoke histograms, Kullback-Leibler Divergence was used. Experiments on the Dyntex database illustrate the effectiveness of the proposed method. Numerical results were obtained by using various types of known LBP for semi-transparent and opaque smoke. The set of all samples was divided in training set (80 %) and testing set (20 %). Experiments show the advantages of 3D Temporal LBPs against classical 2D LBPs for dynamic fast changed textures. Experimental results show that the proposed method is feasible and effective for video-based smoke classification at interactive frame rates.
local binary pattern, smoke detection, video sequence
References
  1. Yuan Feiniu. Video-Based Smoke Detection With Histogram Sequence of LBP and LBPV Pyramids. Fire Safety Journal, 2011, vol. 46, iss. 3, p. 132–139
  2. ByoungChul Ko, , JunOh Park , Jae-Yeal Nam. Spatiotemporal bag-of-features for early wildfire smoke detection. Image and Vision Computing. 2013, vol. 31, iss. 10, p. 786–795.
  3. Celik T., Ozkaramanly H., Demirel H. Fire and Smoke Detection Without Sensors: Image Processing Approach. Proc. 15th European Signal Processing Conf. EUSIPCO, 2007. P. 1794–1798.
  4. Xiong Z., Caballero R. Video-Based Smoke Detection: Possibilities, Techniques, and Challenges Proc. of the Supression and Defection Research and Applications Conf. Orlando, Fla, 2007. P. 157–164.
  5. Favorskaya M., Levtin K. Early Smoke Detection in Outdoor Space by Spatio-Temporal Clustering Using a Single Video Camera. In: Tweedale JW, Jain LC (Eds) Recent Advances in Knowledge-based Paradigms and Applications, 2014, no. 234, p.43–56.
  6. Favorskaya M, Levtin K. Early video-based smoke detection in outdoor spaces by spatio-temporal clustering. Int J of Reasoning-based Intelligent Systems, 2013, no. 5(2), p.133–144.
  7. Celik T., Ozkaramanly H., Demirel H. Fire and Smoke Detection Without Sensors: Image Processing Approach. Proc. 15th European Signal Processing Conf. EUSIPCO, 2007. P. 1794–1798.
  8. Nanni L., Lumini A., Brahnam S, Local binary patterns variants as texture descriptors for medical image analysis, Artificial intelligence in medicine, 2010, vol. 49, no. 2, p. 117–125.
  9. Ojala T., Pietikainen M., Maenpaa T. T. Multiresolution gray-scale and rotation invariant texture classification with local binary pattern.IEEE Transactions on Pattern Analysis and Machine Intelligence, 2002, vol. 24,  no. 7, p. 971–987.
  10. ByoungChul Ko,, JunOh Park, Jae-Yeal Nam Spatiotemporal bag-of-features for early wildfire smoke detection Image and Vision Computing. 2013, vol. 31, iss.10, p. 786–795.
  11. Habiboglu Y. H., Gunay O., Cetin A. E. Real-time wildfire detection using correlation descriptors 19th European Signal Processing Conference (EUSIPCO). 2011, p. 894–898.
  12. Krstinić Damir, Stipaničev Darko, Jakovčević Toni. Histogram – based segmentation fire detection system. Information technology and control. 2009, vol. 38, no. 3, p. 237–244.
  13. Liao W. H., T. J. Young, Texture classification using uniform extended local ternary patterns. International Symposium on Multimedia. 2010, p. 191–195.
  14. Zhao G., Pietikainen M. Dynamic Texture Recognition Using Local Binary Patterns with an Application to Facial Expressions, Senior Member, Transactions on pattern analysis and machine intelligence, 2007, no. 7.
  15. Yuan Feiniu. Rotation and Scale Invariant Local Binary Pattern Based on High Order Directional Derivatives for Texture Classification. Digital Signal Processing, 2014, no. 26, p. 142–152.
  16. Hui Zho, Runsheng Wang, Cheng Wang. A Novel Extended Local-Binary-Pattern Operator for Texture Analysis. Information Sciences, 2008, vol. 178, iss. 22,  p. 4314–4325.
  17. Péteri Renaud, Sándor Fazekas, Mark J. Huiskes. DynTex: A comprehensive database of dynamic textures. Pattern Recognition Letters, 2010, no. 1, p. 1627–1632.

Pyataeva Anna Vladimirovna – postgraduate student, Siberian State Aerospace University named after academician M. F. Reshetnev. Е-mail: anna4u@list.ru