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LAND USE CLASSIFICATION USING DEEP MULTITASK NETWORKS

机译:使用深层多任务网络使用土地使用分类

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Updated information on urban land use allows city planners and decision makers to conduct large scale monitoring of urban areas for sustainable urban growth. Remote sensing data and classification methods offer an efficient and reliable way to update such land use maps. Features extracted from land cover maps are helpful on performing a land use classification task. Such prior information can be embedded in the design of a deep learning based land use classifier by applying a multitask learning setup—simultaneously solving a land use and a land cover classification task. In this study, we explore a fully convolutional multitask network to classify urban land use from very high resolution (VHR) imagery. We experimented with three different setups of the fully convolutional network and compared it against a baseline random forest classifier. The first setup is a standard network only predicting the land use class of each pixel in the image. The second setup is a multitask network that concatenates the land use and land cover class labels in the same output layer of the network while the other setup accept as an input the land cover predictions, predicted by a subpart of the network, concatenated to the original input image patches. The two deep multitask networks outperforms the other two classifiers by at least 30% in average F1-score.
机译:有关城市土地利用的更新信息允许城市规划师和决策者进行大规模监测城市地区,以进行可持续的城市增长。遥感数据和分类方法提供了更新此类土地使用地图的高效可靠的方法。从陆地覆盖图中提取的功能有助于执行土地使用分类任务。通过应用多任务学习设置 - 同时解决土地使用和土地覆盖分类任务,可以嵌入这种基于深度学习的土地使用分类器的设计。在这项研究中,我们探索了一个完全卷积的多任务网络,从非常高分辨率(VHR)图像中分类城市土地使用。我们尝试了三种不同的全卷积网络设置,并将其与基线随机林分类器进行比较。第一个设置是仅预测图像中每个像素的土地使用类的标准网络。第二个设置是一个多任务网络,它在网络的相同输出层中连接到网络中的土地使用和陆地覆盖类标签,而另一个设置接受作为输入的LAND覆盖预测,由网络的子部分预测,连接到原件。输入图像修补程序。两个深的多任务网络平均占外,至少30%,平均f1分数至少30%。

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