Gaussian Process for the Machine Learning-based Smart fire Detection System

Xinyuan Wan, Jianbin Cai, Shengxiang Luo, Zhengxing Tian, Li Zhang, Xiaojian Xia
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Abstract

Smart fire detection systems should be able to detect the fire and trigger the automatic alarm at an early stage. It should also trigger the automatic fire extinguishing system and broadcast the fire alarm under different fire conditions. Due to the strict detection accuracy requirement of the fire detection system, most of the modern smart fire detection systems are based on multi-sensor, or image/video surveillance system to reinforce its fast reaction and high reliability in the action process. In this paper, the multi-sensor detection system is combined with image recognition process. Image recognition is utilized to help the fire detection, when the decision from the multi-sensor system is uncertain or the data is not available/faulty. Image features are extracted by using machine learning methods. Then, the Gaussian classification method is applied to detect the specific fire case. Images from real environments are used to evaluate the proposed method. In addition, we investigate and discuss the detection results when the training data is adequate or inadequate, which verifies that the image-based fire detection scheme combined with multi-sensor system can achieve better accuracy.
基于机器学习的智能火灾探测系统的高斯过程
智能火灾探测系统应该能够在早期探测到火灾并触发自动报警。还应触发自动灭火系统,并在不同的火灾情况下广播火灾报警。由于对火灾探测系统的探测精度要求严格,现代智能火灾探测系统大多采用多传感器或图像/视频监控系统,以加强其在行动过程中的快速反应和高可靠性。本文将多传感器检测系统与图像识别过程相结合。当多传感器系统的决策不确定或数据不可用/错误时,利用图像识别来帮助火灾探测。利用机器学习方法提取图像特征。然后,应用高斯分类方法对具体火灾情况进行检测。使用真实环境中的图像来评估所提出的方法。此外,我们还对训练数据充足或不足时的检测结果进行了研究和讨论,验证了基于图像的火灾检测方案与多传感器系统相结合可以达到更好的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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