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Learnable Earth Parser: Discovering 3D Prototypes in Aerial Scans

About

We propose an unsupervised method for parsing large 3D scans of real-world scenes with easily-interpretable shapes. This work aims to provide a practical tool for analyzing 3D scenes in the context of aerial surveying and mapping, without the need for user annotations. Our approach is based on a probabilistic reconstruction model that decomposes an input 3D point cloud into a small set of learned prototypical 3D shapes. The resulting reconstruction is visually interpretable and can be used to perform unsupervised instance and low-shot semantic segmentation of complex scenes. We demonstrate the usefulness of our model on a novel dataset of seven large aerial LiDAR scans from diverse real-world scenarios. Our approach outperforms state-of-the-art unsupervised methods in terms of decomposition accuracy while remaining visually interpretable. Our code and dataset are available at https://romainloiseau.fr/learnable-earth-parser/

Romain Loiseau, Elliot Vincent, Mathieu Aubry, Loic Landrieu• 2023

Related benchmarks

TaskDatasetResultRank
Shape ReconstructionShapeNet Plane (test)
CD1.34
10
3D ReconstructionEarth Parser
Chamfer Distance (Crop Fields)0.72
4
Semantic segmentationEarth Parser
mIoU (Crop Fields)96.9
4
Semantic segmentationShapeNet-Part planes (test)
mIoU68.6
2
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