4.4 Article

Real-time image smoke detection using staircase searching-based dual threshold AdaBoost and dynamic analysis

期刊

IET IMAGE PROCESSING
卷 9, 期 10, 页码 849-856

出版社

INST ENGINEERING TECHNOLOGY-IET
DOI: 10.1049/iet-ipr.2014.1032

关键词

smoke; image segmentation; image colour analysis; image texture; feature extraction; learning (artificial intelligence); image classification; statistical analysis; search problems; real-time image smoke detection; staircase searching-based dual threshold AdaBoost analysis; smoke colour imaging; image texture; shape imaging; occlusion; extended Haar-like feature extraction; statistical feature extraction; RGB imaging; image classification; dynamic analysis; low false alarm rate

资金

  1. Natural Science Foundation of China [61363038, 61371190]
  2. Cultivated Talent Program for Young Scientists of Jiangxi Province [20142BCB23014]
  3. Science Technology Application Project of Jiangxi Province [KJLD12066]

向作者/读者索取更多资源

It is very challenging to accurately detect smoke from images because of large variances of smoke colour, textures, shapes and occlusions. To improve performance, the authors combine dual threshold AdaBoost with staircase searching technique to propose and implement an image smoke detection method. First, extended Haar-like features and statistical features are efficiently extracted from integral images from both intensity and saturation components of RGB images. Then, a dual threshold AdaBoost algorithm with a staircase searching technique is proposed to classify the features of smoke for smoke detection. The staircase searching technique aims at keeping consistency of training and classifying as far as possible. Finally, dynamic analysis is proposed to further validate the existence of smoke. Experimental results demonstrate that the proposed system has a good robustness in terms of early smoke detection and low false alarm rate, and it can detect smoke from videos with size of 320 x 240 in real time.

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