基于传感器节点和视频烟雾特征的火灾识别

S. Vijayalakshmi, S. Muruganand
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引用次数: 1

摘要

采用高斯混合模型、LK光流法和前景背景减去法提取视频图像前景中的火焰和烟雾区域。利用火灾特征的多种特征提取信息。根据颜色模型RGB和HSI空间提取可疑区域的颜色特征。利用二维离散小波变换提取背景模糊特征。如果烟雾出现在场景中,背景的轮廓边缘会变得模糊。采用LK光流法和高斯混合模型提取运动方向特征。传感器节点采用DHT 11数字温湿度传感器提取温湿度值进行测量,并用TIMSP430单片机对数据进行处理。将视频节点和传感器节点提取的信息相结合,在最恶劣的季节条件下检测该地区发生火灾的可能性。通过这种方法,即使在恶劣的环境条件下,如阴雨天气,也能提高火灾和烟雾探测的准确性。仿真和实验结果表明,该方法提高了检测精度和检测率。传感器输出和视频输出的结合为从视频中发现烟雾或火灾提供了极好的价值。降低了从无烟雾视频中检测烟雾的误检率。可在室外大环境下使用。
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Fire Recognition Based on Sensor node and Feature of Video Smoke
Gaussian mixed model, LK optical flow method and background subtraction from foreground method are used to extract the fire and smoke region in foreground of video image. Multi feature of fire characteristics are used to extract the information. Colour feature of suspected region are extracted according to the colour model RGB and HSI spaces. Background blur feature is extracted using two dimensional discrete wavelet transform. If smoke appears in scene, the contour edge of the background would become blurry. The motion direction feature is extracted using LK optical flow method and gaussion mixed model. The DHT 11 digital temperature - humidity sensor in sensor node is used to extract temperature and humidity values for measurement and TIMSP430 micro controller for processing the information. The video node and sensor node extracted information are combined to detect the possibility of fire in the area during worst season conditions. By this method, the accuracy of fire and smoke detection is improved even in the worst environmental condition such as rainy weather. From the simulated and experimental results, the proposed method improves the accuracy and detection rate. Combination of sensor output and video output give excellent value in finding smoke or fire from videos. They reduces false detection rate of detecting smoke from non-smoke videos. It can be used in outdoor large environment.
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