论文标题

人类和解范围回归和当地气候区分类的多任务学习

Multi-task Learning for Human Settlement Extent Regression and Local Climate Zone Classification

论文作者

Qiu, Chunping, Liebel, Lukas, Hughes, Lloyd H., Schmitt, Michael, Körner, Marco, Zhu, Xiao Xiang

论文摘要

人类定居范围(HSE)和地方气候区(LCZ)地图都是必不可少的来源,例如,对于可持续的城市发展和城市热岛(UHI)研究。遥感(RS) - 基于深度学习(DL)的分类方法通过提供全球映射的潜力来发挥重要作用。但是,大多数努力仅集中在两个方案之一,通常是在特定规模上。这导致了不必要的冗余,因为这两个相关任务都可以利用学习的功能。在这封信中,首次将多任务学习(MTL)的概念引入了HSE回归和LCZ分类。我们提出了一个MTL框架,并开发了端到端卷积神经网络(CNN),该网络由用于共享功能学习的骨干网络,特定于任务特定功能学习的注意模块以及平衡两个任务的权重策略。我们还建议利用HSE预测作为LCZ分类的先验,以提高准确性。 MTL方法通过全球13个城市的Sentinel-2数据进行了广泛的测试。结果表明,该框架能够为这两个任务提供竞争解决方案。

Human Settlement Extent (HSE) and Local Climate Zone (LCZ) maps are both essential sources, e.g., for sustainable urban development and Urban Heat Island (UHI) studies. Remote sensing (RS)- and deep learning (DL)-based classification approaches play a significant role by providing the potential for global mapping. However, most of the efforts only focus on one of the two schemes, usually on a specific scale. This leads to unnecessary redundancies, since the learned features could be leveraged for both of these related tasks. In this letter, the concept of multi-task learning (MTL) is introduced to HSE regression and LCZ classification for the first time. We propose a MTL framework and develop an end-to-end Convolutional Neural Network (CNN), which consists of a backbone network for shared feature learning, attention modules for task-specific feature learning, and a weighting strategy for balancing the two tasks. We additionally propose to exploit HSE predictions as a prior for LCZ classification to enhance the accuracy. The MTL approach was extensively tested with Sentinel-2 data of 13 cities across the world. The results demonstrate that the framework is able to provide a competitive solution for both tasks.

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