基于光流残差增量的早期烟雾检测系统

Yang Zhao, Wei Lu, Yan Zheng, Jian Wang
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引用次数: 11

摘要

长期以来,通过运动检测来提取密集烟雾区域一直是一个很大的挑战。因此,很少有可疑的烟雾区域被识别为早期火灾警报。本文提出了一种能够有效提取密集烟雾区域的早期烟雾检测系统。首先,由于动态纹理区域的亮度不是恒定的,通过计算光流残差来定位疑似烟雾区域;利用光流残差增量的一定阈值来区分烟雾和其他动态纹理。其次,通过充分的实验,选择了灰色、色度降低、边缘能量降低、光流取向扩散和圆度这五个能够共同代表烟雾区域的特征;实验结果表明,该系统能够较早地检测到烟雾,对各种干扰具有较强的鲁棒性,特别是对其他动态纹理的干扰。
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An early smoke detection system based on increment of optical flow residual
It has long been a big challenge to extract dense smoke regions by motion detection. As a result, there are too few suspected smoke regions being recognized for an early fire alarm. In this paper, an early smoke detecting system that can efficiently extract dense smoke regions is proposed. Firstly, since the brightness in the areas that have dynamic texture is not constant, the residuals of optical flow are calculated to locate suspected smoke regions. A certain threshold of the increment of optical flow residuals is also used to distinguish smoke from other dynamic texture. Secondly, five features that can jointly represent a smoke area, including grayish color, chrominance decrease, edge energy decrease, optical flow orientation diffusion and circularity, are chosen by thorough experiments. Experimental results show that the proposed system can detect the smoke in early time and is robust to most kinds of interferences, especially other dynamic textures.
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