Advancing ALS Applications with Large-Scale Pre-training: Dataset Development and Downstream Assessment
- URL: http://arxiv.org/abs/2501.05095v1
- Date: Thu, 09 Jan 2025 09:21:09 GMT
- Title: Advancing ALS Applications with Large-Scale Pre-training: Dataset Development and Downstream Assessment
- Authors: Haoyi Xiu, Xin Liu, Taehoon Kim, Kyoung-Sook Kim,
- Abstract summary: The pre-training and fine-tuning paradigm has revolutionized satellite remote sensing applications.
We construct a large-scale ALS point cloud dataset and evaluate its impact on downstream applications.
Our results show that the pre-trained models significantly outperform their scratch counterparts across all downstream tasks.
- Score: 6.606615641354963
- License:
- Abstract: The pre-training and fine-tuning paradigm has revolutionized satellite remote sensing applications. However, this approach remains largely underexplored for airborne laser scanning (ALS), an important technology for applications such as forest management and urban planning. In this study, we address this gap by constructing a large-scale ALS point cloud dataset and evaluating its impact on downstream applications. Our dataset comprises ALS point clouds collected across the contiguous United States, provided by the United States Geological Survey's 3D Elevation Program. To ensure efficient data collection while capturing diverse land cover and terrain types, we introduce a geospatial sampling method that selects point cloud tiles based on land cover maps and digital elevation models. As a baseline self-supervised learning model, we adopt BEV-MAE, a state-of-the-art masked autoencoder for 3D outdoor point clouds, and pre-train it on the constructed dataset. The pre-trained models are subsequently fine-tuned for downstream tasks, including tree species classification, terrain scene recognition, and point cloud semantic segmentation. Our results show that the pre-trained models significantly outperform their scratch counterparts across all downstream tasks, demonstrating the transferability of the representations learned from the proposed dataset. Furthermore, we observe that scaling the dataset using our geospatial sampling method consistently enhances performance, whereas pre-training on datasets constructed with random sampling fails to achieve similar improvements. These findings highlight the utility of the constructed dataset and the effectiveness of our sampling strategy in the pre-training and fine-tuning paradigm. The source code and pre-trained models will be made publicly available at \url{https://github.com/martianxiu/ALS_pretraining}.
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