Optimizing Deep Learning Models for Climate-Related Natural Disaster Detection from UAV Images and Remote Sensing Data.

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY Journal of Imaging Pub Date : 2025-01-24 DOI:10.3390/jimaging11020032
Kim VanExel, Samendra Sherchan, Siyan Liu
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Abstract

This research study utilized artificial intelligence (AI) to detect natural disasters from aerial images. Flooding and desertification were two natural disasters taken into consideration. The Climate Change Dataset was created by compiling various open-access data sources. This dataset contains 6334 aerial images from UAV (unmanned aerial vehicles) images and satellite images. The Climate Change Dataset was then used to train Deep Learning (DL) models to identify natural disasters. Four different Machine Learning (ML) models were used: convolutional neural network (CNN), DenseNet201, VGG16, and ResNet50. These ML models were trained on our Climate Change Dataset so that their performance could be compared. DenseNet201 was chosen for optimization. All four ML models performed well. DenseNet201 and ResNet50 achieved the highest testing accuracies of 99.37% and 99.21%, respectively. This research project demonstrates the potential of AI to address environmental challenges, such as climate change-related natural disasters. This study's approach is novel by creating a new dataset, optimizing an ML model, cross-validating, and presenting desertification as one of our natural disasters for DL detection. Three categories were used (Flooded, Desert, Neither). Our study relates to AI for Climate Change and Environmental Sustainability. Drone emergency response would be a practical application for our research project.

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从无人机图像和遥感数据中优化与气候相关的自然灾害探测深度学习模型。
该研究利用人工智能(AI)从航空图像中检测自然灾害。洪水和沙漠化是考虑的两种自然灾害。气候变化数据集是通过汇编各种开放获取的数据源创建的。该数据集包含6334张来自无人机(UAV)图像和卫星图像的航空图像。然后使用气候变化数据集训练深度学习(DL)模型来识别自然灾害。使用了四种不同的机器学习(ML)模型:卷积神经网络(CNN)、DenseNet201、VGG16和ResNet50。这些机器学习模型是在我们的气候变化数据集上训练的,这样它们的表现就可以进行比较。选择DenseNet201进行优化。所有四种ML模型都表现良好。DenseNet201和ResNet50的检测准确率最高,分别为99.37%和99.21%。该研究项目展示了人工智能在应对环境挑战(如与气候变化有关的自然灾害)方面的潜力。这项研究的方法是新颖的,它创建了一个新的数据集,优化了ML模型,交叉验证,并将荒漠化作为DL检测的自然灾害之一。使用了三种类型(洪水,沙漠,两者都不是)。我们的研究涉及人工智能对气候变化和环境可持续性的影响。无人机应急响应将是我们研究项目的一个实际应用。
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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
期刊最新文献
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