使用社交媒体图像绘制隐含土地利用地图

Connor Greenwell, Scott Workman, Nathan Jacobs
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引用次数: 3

摘要

土地利用分类是一项应用广泛的遥感核心任务。通常,这被表示为一个监督学习问题,其第一步是开发离散标签的分类。然而,这些类别所能表达的用途范围有限,在定义类别时往往需要作出武断的决定。相反,我们认为土地利用的抽象概念可以通过在一个地区发现的常见物体的类型和数量来间接表征。为了捕捉这些物体的存在,我们提出了一种隐式方法来定义和估计土地利用,该方法依赖于稀疏分布的社交媒体图像,但保留了卫星图像提供的密集覆盖的好处。我们的方法是一个卷积神经网络,它在卫星图像上运行,并输出该位置社交媒体图像中常见物体数量的概率分布。我们表明,学习到的特征表示对现有的土地利用类别是有区别的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implicit Land Use Mapping Using Social Media Imagery
Land use classification is a central remote sensing task with a broad range of applications. Typically this is represented as a supervised learning problem, the first step of which is to develop a taxonomy of discrete labels. However, such categories are restricted in the range of uses they can convey and arbitrary decisions are often required when defining the categories. Instead, we argue that the abstract notion of land use can be indirectly characterized by the types and quantities of common objects found in an area. To capture the presence of such objects, we propose an implicit approach to defining and estimating land use that relies on sparsely distributed social media imagery but retains the benefits of dense coverage provided by satellite imagery. Our method is formulated as a convolutional neural network that operates on satellite imagery and outputs a probability distribution over quantities of objects common in social media imagery at that location. We show that the learned feature representation is discriminative for existing land use categories.
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