使用机器学习的基于计算机视觉的早期火灾探测

K. S. Kumar, K. B. Varma, L. Sujihelen, S. Jancy, R. Aishwarya, R. Yogitha
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引用次数: 3

摘要

每年都有成千上万公顷的土地被大火烧毁。这些火灾产生的一氧化碳比所有交通产生的一氧化碳都多。早期发现可能的危险区域和早期发现火灾可以大大减少响应时间和消防成本以及损害的可能性。通过使用图像处理技术,可以及早发现火灾并向人们发出警报。传感器方法通过烟雾探测火灾,但它的应用范围有限,只适用于某些地区。在这项工作中,限制将减少,技术将优化。在该系统中,采用Haar级联分类器进行火灾探测。Pycharm IDE用于实现此工作。该系统使用网络摄像头作为输入源,从周围环境中捕获视频馈送。对火灾的探测将是准确和准确的,没有任何延迟与拟议的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computer Vision-Based Early Fire Detection Using Machine Learning
Thousands of hectares of land are destroyed every year by fire. There is more carbon monoxide generated by these fires than from all the traffic. The early detection of possible danger areas and early detection of fires can greatly reduce response times and firefighting costs as well as the possibility of damage. By using image processing technology, a fire could be detected early and people would be alerted. The sensor method detects fires through smoke, but it has limited applications, and is only suitable for certain areas. In this proposed work, limitations will be reduced and the technology will be optimized. In this proposed system, a Haar Cascade classifier is used for fire detection. Pycharm IDE is used for implementing this work. The system uses the webcam as a source of input for capturing the video feed from the surrounding environment. Detection of the fire will be exact and accurate without any delay with the proposed work.
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