Mapping small watercourses with deep learning – impact of training watercourse types separately

Christian Koski, P. Kettunen, Justus Poutanen, J. Oksanen
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引用次数: 1

Abstract

Abstract. Deep learning methods for semantic segmentation have shown great potential in automating mapping of geospatial features, including small watercourses such as streams and ditches. There are a variety of small watercourse types. In many use cases users are only interested in specific types of watercourses. However, the impact on results from neural networks trained with only some types of small watercourses, compared to all types of watercourses is not well known. We trained four deep learning models to semantically segment watercourses from an elevation model. One model was trained with all small watercourses in the labels as a single class, while three models were trained each with a single type of watercourse in the label data. The results show that training the network with a single type of watercourse results in worse recall for all three watercourse types, compared to when training all of them together. This indicates that if the goal is to get as complete set of features as possible, it is better to include all watercourse types in the training data. Future studies could use multi-class output from neural network to determine how well networks could automatically classify features when training with all small watercourses in an area.
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用深度学习绘制小河道——分别训练河道类型的影响
摘要语义分割的深度学习方法在地理空间特征的自动化映射方面显示出巨大的潜力,包括小溪和沟渠等小水道。有各种各样的小水道类型。在许多用例中,用户只对特定类型的水道感兴趣。然而,与所有类型的水道相比,仅用某些类型的小水道训练神经网络对结果的影响尚不清楚。我们训练了四个深度学习模型,从一个高程模型中对河道进行语义分割。其中一个模型将标签中的所有小水道作为一个类进行训练,而三个模型分别使用标签数据中的单个水道类型进行训练。结果表明,与一起训练所有水道类型相比,使用单一水道类型训练网络对所有三种水道类型的召回率更低。这表明,如果目标是获得尽可能完整的特征集,那么最好在训练数据中包含所有水道类型。未来的研究可以使用神经网络的多类输出来确定网络在对一个区域内所有小水道进行训练时自动分类特征的能力。
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