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Silhouette-based multi-sensor smoke detection
Authors:Steven Verstockt  Chris Poppe  Sofie Van Hoecke  Charles Hollemeersch  Bart Merci  Bart Sette  Peter Lambert  Rik Van de Walle
Affiliation:1. Department of Electronics and Information Systems, Multimedia Lab, Ghent University, IBBT, Gaston Crommenlaan 8, bus 201, Ledeberg, 9050, Ghent, Belgium
2. ELIT Lab, University College West Flanders, Ghent University Association, Graaf Karel de Goedelaan 5, 8500, Ghent, Kortrijk, Belgium
3. Department of Flow, Heat and Combustion Mechanics, Ghent University, Sint-Pietersnieuwstraat 41, 9000, Ghent, Belgium
4. Warringtonfiregent (WFRGent NV), Ottergemsesteenweg 711, 9000, Ghent, Belgium
Abstract:Fire is one of the leading hazards affecting everyday life around the world. The sooner the fire is detected, the better the chances are for survival. Today’s fire alarm systems, such as video-based smoke detectors, however, still pose many problems. In order to accomplish more accurate video-based smoke detection and to reduce false alarms, this paper proposes a multi-sensor smoke detector which takes advantage of the different kinds of information represented by visual and thermal imaging sensors. The detector analyzes the silhouette coverage of moving objects in visual and long-wave infrared registered (~aligned) images. The registration is performed using a contour mapping algorithm which detects the rotation, scale and translation between moving objects in the multi-spectral images. The geometric parameters found at this stage are then further used to coarsely map the silhouette images and coverage between them is calculated. Since smoke is invisible in long-wave infrared its silhouette will, contrarily to ordinary moving objects, only be detected in visual images. As such, the coverage of thermal and visual silhouettes will start to decrease in case of smoke. Due to the dynamic character of the smoke, the visual silhouette will also show a high degree of disorder. By focusing on both silhouette behaviors, the system is able to accurately detect the smoke. Experiments on smoke and non-smoke multi-sensor sequences indicate that the automated smoke detection algorithm is able to coarsely map the multi-sensor images. Furthermore, using the low-cost silhouette analysis, a fast warning, with a low number of false alarms, can be given.
Keywords:
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