使用深度学习技术进行森林火灾探测

Ishaan Dawar, Soumyo Deep Gupta, Rashika Singh, Yash Kothari, Shirshendu Layek
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摘要

森林火灾对人类和环境都构成严重威胁。预计到2030年,世界上一半的森林将被森林火灾摧毁。它们是一个令人严重关切的原因,因为自然灾害和人为灾害危及土地、植物、人类和动物的生命存在于这些栖息地。为了防止重大灾害,需要一个快速的决策机制,以便及早发现,使环境免受这些迅速蔓延的森林火灾的影响。最新的探测机制利用人工智能进行森林火灾的早期探测。本文提出了一种基于卷积神经网络的森林火灾图像识别技术。这项工作使用了一个公开的卫星图像数据集来检测森林火灾,解决了识别有火和没有火的图像的分类问题。这项工作提出使用基于深度学习的CNN模型,如VGGNet、LeNet5、AlexNet和Xception,以及基于CNN的模型。用几个性能指标来评价所提出的识别有火和无火方法的性能,并在实际应用的CNN模型中进行了比较。其中Mobilenet的准确率最低,CNN模型的准确率最高。考虑到这个新的森林火灾探测数据集的可用性,建议的森林火灾分类方法的结果是令人鼓舞的。
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 using Deep Learning Techniques
Forest fires pose a serious threat to both people and the environment. Half of the world's forests are predicted to be destroyed by forest fires by 2030. They are a reason of serious concern since both natural and man-made disasters endanger land, plants, and human as well as animal life which exist in those habitats. To prevent substantial disasters, a quick decision-making mechanism is needed for early detection to save the environment from these fast-spreading forest fires. The latest detection mechanisms make use of artificial intelligence for early forest fire detection. This work proposes a convolutional neural network-based image identification technique for detecting forest fires. The work uses a publicly available satellite image dataset for detecting forest fires, which resolves the classification problem of recognizing images with and without fire. The work proposes the use of deep learning-based CNN models like VGGNet, LeNet5, AlexNet, and Xception and a CNN based model. Several performances criterions are used to evaluate the performance of the suggested methods which are used for identifying fire and no fire and are compared to among the applied CNN models. Where Mobilenet has the lowest accuracy, and the CNN model has the best accuracy. Considering the availability of this new forest fire detection dataset, the results of the suggested approach for classifying forest fires are encouraging.
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