Learning Digital Terrain Models from Point Clouds: ALS2DTM Dataset and
Rasterization-based GAN
- URL: http://arxiv.org/abs/2206.03778v1
- Date: Wed, 8 Jun 2022 09:50:48 GMT
- Title: Learning Digital Terrain Models from Point Clouds: ALS2DTM Dataset and
Rasterization-based GAN
- Authors: Ho\`ang-\^An L\^e, Florent Guiotte, Minh-Tan Pham, S\'ebastien
Lef\`evre, Thomas Corpetti
- Abstract summary: This paper collects from open sources a large-scale dataset of ALS point clouds and corresponding DTMs with various urban, forested, and mountainous scenes.
A baseline method is proposed as the first attempt to train a Deep neural network to extract digital Terrain models directly from ALS point clouds.
Extensive studies with well-established methods are performed to benchmark the dataset and analyze the challenges in learning to extract DTM from point clouds.
- Score: 6.267267911687337
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Despite the popularity of deep neural networks in various domains, the
extraction of digital terrain models (DTMs) from airborne laser scanning (ALS)
point clouds is still challenging. This might be due to the lack of dedicated
large-scale annotated dataset and the data-structure discrepancy between point
clouds and DTMs. To promote data-driven DTM extraction, this paper collects
from open sources a large-scale dataset of ALS point clouds and corresponding
DTMs with various urban, forested, and mountainous scenes. A baseline method is
proposed as the first attempt to train a Deep neural network to extract digital
Terrain models directly from ALS point clouds via Rasterization techniques,
coined DeepTerRa. Extensive studies with well-established methods are performed
to benchmark the dataset and analyze the challenges in learning to extract DTM
from point clouds. The experimental results show the interest of the agnostic
data-driven approach, with sub-metric error level compared to methods designed
for DTM extraction. The data and source code is provided at
https://lhoangan.github.io/deepterra/ for reproducibility and further similar
research.
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