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Machine Vision Based Fire Detection Techniques: A Survey

机译:基于机器视觉的火灾探测技术:调查

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The risk of fires is ever increasing along with the boom of urban buildings. The current methods of detecting fire with the use of smoke sensors with large areas, however poses an issue. The introduction of video surveillance systems has given a great opportunity for identifying smoke and flame from faraway locations and tackles this risk. Processing this huge amount of data is a problem with using these video and image data. In recent times, a number of methods have been proposed to deal with this challenge and identify fire and smoke. Image processing algorithms for detecting flame and smoke, motion-based estimation of smoke, etc are some of the methods that are proposed earlier. Recently, there has been an array of methods proposed using Deep Learning, Convolutional Neural Networks (CNNs) to automatically detect and predict flame and smoke in videos and images. In this paper, we present a complete survey and analysis of these machine vision based fire/smoke detection methods and their performance. Firstly, we introduce the fundamentals of image processing methods, CNNs and their application prospect in video smoke and fire detection. Next, the existing datasets and summary of the recent methodologies used in this field are discussed. Finally, the challenges and suggested improvements to further the development of the application of CNNs in this field are discussed. CNNs are shown to have a great potential for smoke and fire detection and better development can help prepare a robust system that would greatly save human lives and monetary wealth from getting destroyed from fires. Finally, research guidelines are presented to fellow researchers regarding data augmentation, fire and smoke detection models which need to be investigated in the future to make progress in this crucial area of research.
机译:火灾的风险随着城市建筑的繁荣而越来越多。使用大面积的烟雾传感器检测火灾目前的方法,造成问题。视频监控系统的引入为遥远的地方识别烟雾和火焰而产生了一个很好的机会,并解决这种风险。处理此大量数据是使用这些视频和图像数据的问题。最近,已经提出了许多方法来处理这一挑战并识别火灾和烟雾。用于检测火焰和烟雾的图像处理算法,基于运动的烟雾估计等是前面提出的一些方法。最近,已经使用深度学习,卷积神经网络(CNNS)提出了一系列方法,以自动检测和预测视频和图像中的火焰和烟雾。在本文中,我们对这些机器视觉的火灾/烟雾检测方法及其性能进行了完整的调查和分析。首先,我们介绍了图像处理方法,CNNS及其在视频烟雾和火灾探测中的应用前景的基础。接下来,讨论此字段中使用的最近方法的现有数据集和摘要。最后,讨论了进一步发展该领域中CNN的应用的挑战和建议的改进。 CNNS显示出烟雾和火灾探测的巨大潜力,更好的发展可以帮助制定一个强大的系统,这将极大地拯救人类的生命和货币财富从火灾中摧毁。最后,对研究人员提出了关于数据增强,火灾和烟雾检测模型的研究指南,这些研究员需要在未来进行研究,以便在这一关键的研究领域取得进展。

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