利用LUV色彩空间的图像处理技术检测火灾

D. Pritam, J. Dewan
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引用次数: 29

摘要

与传统的基于传感器的火灾探测系统相比,基于视觉的火灾探测系统近年来得到了广泛的应用。住宅、工业、公共和商业场所视频监控的普及和需求支持了基于视觉的火灾探测系统的广泛使用。火的颜色是识别图像中火的基本技术。然而,火的颜色从红色、橙色、黄色到白色不等。此外,还有一些非火的物体具有类似火的颜色。为了提高火灾探测系统的准确性,彩色探测与其他各种技术相结合。边缘检测、运动检测、火焰覆盖面积、烟雾存在、火焰生长、背景分割等技术是众多研究者结合起来对视频中的火焰图像和类火非火焰图像进行正确分类的技术。还有不同的阈值用于区分任何帧中的火焰。这些阈值需要根据区域类型和亮度级别进行调整。此外,如果火焰大于阈值,则后续帧和火焰覆盖区域的差异支持火灾的存在。本文对目前五种基于视觉的火灾探测系统进行了比较分析。这些火灾探测系统是基于火焰颜色探测结合其他特征,如运动和帧面积。提出了一种基于LUV色彩空间和混合变换的火灾探测系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of fire using image processing techniques with LUV color space
Vision based fire detection system have recently gained popularity as compared to traditional fire detection system based on sensors. The popularity and need of video surveillance at residential, Industrial, public and business locations have supported the widespread use of vision based fire detection system. The colour of fire is the basic technique for identification of fire in an image. However, the colour of fire varies from red, orange, yellow to white. Also, there are non-fire objects with fire-like colour. In order to improve the accuracy of fire detection system, colour detection is combined with various other techniques. Edge detection, motion detection, area covered by flames, existence of smoke, growth of fire and background segmentation are some techniques which are combined by various researchers and used to correctly classify the fire images and fire-like non fire images in a video. There are also various thresholds that are used to differentiate fire in any frame. These thresholds need to be adjusted based on the type of area and its brightness level. Also, the difference in the subsequent frames and area covered by the flames supports the existence of fire if it is greater than the threshold. This paper presents the comparative analysis of five recent vision based fire detection system. These fire detection systems are based on flame colour detection combined with other features such as motion and area of frame. The fire detection system based on LUV colour space and hybrid transforms is proposed.
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