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Terrain-Informed Self-Supervised Learning: Enhancing Building Footprint Extraction From LiDAR Data With Limited Annotations
IEEE Transactions on Geoscience and Remote Sensing ( IF 8.2 ) Pub Date : 2024-04-19 , DOI: 10.1109/tgrs.2024.3391391
Anuja Vats 1 , David Völgyes 2 , Martijn Vermeer 2 , Marius Pedersen 1 , Kiran Raja 1 , Daniele S. M. Fantin 2 , Jacob Alexander Hay 2
Affiliation  

Estimating building footprint maps from geospatial data is vital in urban planning, development, disaster management, and various other applications. Deep learning methodologies have gained prominence in building segmentation maps, offering the promise of precise footprint extraction without extensive postprocessing. However, these methods face challenges in generalization and label efficiency, particularly in remote sensing, where obtaining accurate labels can be both expensive and time consuming. To address these challenges, we propose terrain-aware self-supervised learning (SSL), tailored to remote sensing, using digital elevation models (DEMs) from light detection and ranging (LiDAR) data. We propose to learn a model to differentiate between bare Earth and superimposed structures enabling the network to implicitly learn domain-relevant features without the need for extensive pixel-level annotations. We test the effectiveness of our approach by evaluating building segmentation performance on test datasets with varying label fractions. Remarkably, with only 1% of the labels (equivalent to 25 labeled examples), our method improves over ImageNet pretraining, showing the advantage of leveraging unlabeled data for feature extraction in the domain of remote sensing. The performance improvement is more pronounced in few-shot scenarios and gradually closes the gap with ImageNet pretraining as the label fraction increases. We test on a dataset characterized by substantial distribution shifts (including resolution variation and labeling errors) to demonstrate the generalizability of our approach. When compared with other baselines, including ImageNet pretraining and more complex architectures, our approach consistently performs better, demonstrating the efficiency and effectiveness of self-supervised terrain-aware feature learning.

中文翻译:

地形信息自监督学习:利用有限注释增强从 LiDAR 数据中提取建筑物足迹

更新日期:2024-04-19
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