基于多光谱卫星图像的稠密云分类

K. Wohlfarth, C. Schröer, Maximilian Klass, Simon Hakenes, Maike Venhaus, S. Kauffmann, T. Wilhelm, C. Wohler
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引用次数: 4

摘要

在本文中,我们探索两种先进的机器学习技术的功能,将学习与卷积神经网络(CNN)和支持向量机(SVM)区分10云属。我们将使用Landsat 8卫星获得的图像来评估这些方法。云属的分类对于诸如监测大气或气象过程等遥感应用具有高度的普遍相关性。迁移学习具有优势,因为它利用了神经网络,已知神经网络表现良好,并且能够适应相对较小的训练数据大小的特定问题。我们将利用Landsat 8图像来评估所检查的机器学习方法,因为这些图像数据是大量免费提供的。将用于训练的Landsat 8图像缩小到每像素约300米的分辨率,将允许CNN和SVM的大小保持在合理的低水平,这样我们的训练数据集可以被限制在一个适中的大小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dense Cloud Classification on Multispectral Satellite Imagery
In this paper we explore the capabilities of two state-of-the-art machine learning techniques, transfer learning with convolutional neural networks (CNN) and support vector machines (SVM) to distinguish between 10 cloud genera. We will evaluate these methods using images acquired by the satellite Landsat 8. The classification of cloud genera is of high general relevance for remote sensing applications such as the surveillance of atmospheric or meteorological processes. Transfer learning is of advantage because it exploits neural networks, which are known to perform well, and enables the adaption to a specific problem with relatively small training data size. We will utilize Landsat 8 images for evaluating the examined machine learning approaches because these image data are freely available in large amounts. Downscaling the Landsat 8 images utilized for training to a resolution of about 300 meters per pixel will allow for keeping the CNN and SVM size reasonably low, such that our training data set can be restricted to a moderate size.
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