基于多准则图像处理技术的视频序列火灾检测

Behrouz Memarzadeh, M. A. Mohammadi
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引用次数: 0

摘要

在过去的十年中,随着摄像机监控系统的普及,基于视觉的火焰检测引起了人们的极大关注。通过对高速摄像机产生的视频数据进行处理,提出了一种多准则的火灾或火焰检测方法。由于火焰图像是一类特殊的图像,火焰的一些独特特征可以用来识别火焰。火焰图像与其他一般图像之间存在一些差异。通过使用这些特征,我们能够以最少的误报正确地检测火灾。本文提出了一种通过计算识别像素数来检测火灾并减少误报警的算法。在算法中,我们对图像进行预处理以获得更好的效果。因此,我们首先根据火焰图像的统计分布对其灰度值进行调整,以获得更好的处理效果。然后,我们尝试提取图像中的五个特征。首先,通过使用颜色特征,即红绿比,我们可以识别可能的类似火或类似火的像素。其次,为了突出边缘灰度对比度高的区域,我们使用了扩展的prewitt滤波器。我们对上述两幅处理图像进行AND运算去除不相关的像素点,最后利用闪烁频率将识别像素点数量随时间的振荡变化转换到频域完成检测算法。仿真验证了该算法在视频序列中不同情况下的火灾检测能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fire Detection Using Multi Criteria Image Processing Technique in Video Sequences
Vision-based flame detection has drawn significant attention in the past decade with camera surveillance systems becoming ubiquitous. This paper proposes a multi criterion method to detect fire or flames by processing the video data generated by a high speed camera. Since flame images are special class of images, some of the unique features of a flame may be used to identify flame. There are some differences between flame images and other general images. By using these features we are able to detect fire correctly with least false alarm. In this paper we present an algorithm which can detect fire and reduce number of false alarms by counting number of identified pixels. In the algorithm, we preprocess the images to have better results. So first we adjust the gray level of a flame image according to its statistical distribution to have better processing. After that we try to extract fire features in images. First by using color characteristics, the ratio of red to green, we can identify probable fire-like or fire like pixels. Second, to highlight the regions with high gray level contrast at their edges, we use the extended prewitt filter. We use AND operation on two above processing images to remove unrelated pixels, at last by using flicker frequency, the oscillating change in the number of identified pixels over time is transformed into the frequency domain to complete detection algorithm. Simulation proves the algorithm ability to detect fire in different situations in video sequences.
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