Spatial Knowledge-Infused Hierarchical Learning: An Application in Flood Mapping on Earth Imagery
Zelin Xu, Tingsong Xiao, Wenchong He, Yu Wang, Zhe Jiang

TL;DR
This paper introduces SKI-HL, a hierarchical learning framework that leverages spatial knowledge and multi-resolution inference to improve flood mapping from Earth imagery with limited labels.
Contribution
The paper presents a novel hierarchical approach that integrates spatial knowledge and uncertainty-aware learning for label inference in geospatial deep learning.
Findings
Outperforms baseline methods on flood mapping datasets
Effectively handles sparse and noisy labels
Reduces computational costs through multi-resolution inference
Abstract
Deep learning for Earth imagery plays an increasingly important role in geoscience applications such as agriculture, ecology, and natural disaster management. Still, progress is often hindered by the limited training labels. Given Earth imagery with limited training labels, a base deep neural network model, and a spatial knowledge base with label constraints, our problem is to infer the full labels while training the neural network. The problem is challenging due to the sparse and noisy input labels, spatial uncertainty within the label inference process, and high computational costs associated with a large number of sample locations. Existing works on neuro-symbolic models focus on integrating symbolic logic into neural networks (e.g., loss function, model architecture, and training label augmentation), but these methods do not fully address the challenges of spatial data (e.g.,…
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Taxonomy
TopicsFlood Risk Assessment and Management · Multimodal Machine Learning Applications
MethodsFocus · Balanced Selection
