森林火灾探测:深度学习算法的比较分析

M. Karthi, R. Priscilla, Subhashini G, Niroshini Infantia C, Abijith G R, Vinisha J
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引用次数: 1

摘要

火灾对地球来说是一个严重的威胁,从蔓延的城市到密不透风的丛林。这些必须通过实施火灾探测系统来避免,然而,目前基于设施的探测系统的高成本、专业连接、失火和缺乏可靠性已经成为障碍。在本文中,我们使用深度学习向检测视频中的火灾迈出了一步。深度学习是建立在人工神经网络上的一个新概念,它在许多领域都表现出色。我们打算解决当前方法的不足之处,并开发一种精确而敏锐的系统,该系统可以在各种环境中快速实用地识别火灾,从而节省大量的时间和资源。推荐的火灾检测是一种基于卷积神经网络- cnn和YOLOV3方法的方法,可以很好地完成合适的火灾图像检测,通过数据集训练可以兼容火灾检测。智能城市中现有的火灾探测系统可以通过计算机视觉技术进行改变,从而利用数字创新在社区中建立消防安全。在这项工作中,我们创造了一个火灾探测器,它可以快速准确地识别即使是最小的火花,并在火灾开始超过8秒时发出警报。改进的You Only Look Once (YOLOv3)网络用于创建革命性的卷积神经网络,可以探测火区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forest Fire Detection: A Comparative Analysis of Deep Learning Algorithms
Fires are a serious hazard to the planet, from spreading cities to impenetrable jungles. These must be avoided by implementing fire detection systems, however, the high cost, specialized connectivity, misfires, and lack of reliability of current facilities-based detection systems have functioned as hurdles. In this paper, we use Deep Learning to make a step toward detecting fire in videos. Deep learning is a novel concept built on artificial neural networks where it has excelled in a number of fields. We intend to resolve the inadequacies of current methods and develop a precise and perceptive system that can identify firesas quickly as practicableand function in a range of environments, saving a tremendous amount of time and resources. the recommended commended a fire detection is an approach based on Convolutional Neural Networks-CNN and the YOLOV3 method to accomplish well ad suitablefire picture detection, which is compatible with fire detection through dataset training. existing fire-detection systems in smart cities can be changed with computer vision techniques to build fire safety in the community using digital innovations. In this work, we created a fire detector that can quickly and precisely recognize even the smallest sparks and sound an alarm if a fire starts over eight seconds. An improved You Only Look Once (YOLOv3) network was used to create a revolutionary convolutional neural network that can detect fire zones.
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