Analyzing Multispectral Satellite Imagery of South American Wildfires Using Deep Learning

Christopher Sun
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引用次数: 4

Abstract

Since frequent severe droughts are lengthening the dry season in the Amazon Rainforest, it is important to detect wildfires promptly and forecast possible spread for effective suppression response. Current wildfire detection models are not versatile enough for the low-technology conditions of South American hot spots. This deep learning study first trains a Fully Convolutional Neural Network on Landsat 8 images of Ecuador and the Galapagos, using Green and Short-wave Infrared bands to predict pixel-level binary fire masks. This model achieves a 0.962 validation F2 score and a 0.932 F2 score on test data from Guyana and Suriname. Afterward, image segmentation is conducted on the Cirrus band using K-Means Clustering to simplify continuous pixel values into three discrete classes representing differing degrees of cirrus cloud contamination. Three additional Convolutional Neural Networks are trained to conduct a sensitivity analysis measuring the effect of simplified features on model accuracy and train time. The Experimental model trained on the segmented cirrus images provides a statistically significant decrease in train time compared to the Control model trained on raw cirrus images, without compromising binary accuracy. This proof of concept reveals that feature engineering can improve the performance of wildfire detection models by lowering computational expense.
利用深度学习分析南美野火的多光谱卫星图像
由于频繁的严重干旱正在延长亚马逊雨林的旱季,因此及时发现野火并预测可能的蔓延对于有效的扑灭反应至关重要。目前的野火探测模型对于南美热点地区的低技术条件来说还不够通用。这项深度学习研究首先在厄瓜多尔和加拉帕戈斯群岛的Landsat 8图像上训练一个全卷积神经网络,使用绿色和短波红外波段预测像素级二进制火灾掩模。该模型在圭亚那和苏里南测试数据上的验证F2得分为0.962,F2得分为0.932。然后,使用K-Means聚类对卷云波段进行图像分割,将连续像素值简化为代表不同程度卷云污染的三个离散类。另外训练三个卷积神经网络进行灵敏度分析,测量简化特征对模型精度和训练时间的影响。与在原始卷云图像上训练的控制模型相比,在不影响二值精度的情况下,在分割后的卷云图像上训练的实验模型在统计上显著减少了训练时间。这一概念证明表明,特征工程可以通过降低计算成本来提高野火检测模型的性能。
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