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📄 Abstract
Abstract: 3D Gaussian splatting (3DGS) and its subsequent variants have led to
remarkable progress in simultaneous localization and mapping (SLAM). While most
recent 3DGS-based SLAM works focus on small-scale indoor scenes, developing
3DGS-based SLAM methods for large-scale forest scenes holds great potential for
many real-world applications, especially for wildfire emergency response and
forest management. However, this line of research is impeded by the absence of
a comprehensive and high-quality dataset, and collecting such a dataset over
real-world scenes is costly and technically infeasible. To this end, we have
built a large-scale, comprehensive, and high-quality synthetic dataset for SLAM
in wildfire and forest environments. Leveraging the Unreal Engine 5 Electric
Dreams Environment Sample Project, we developed a pipeline to easily collect
aerial and ground views, including ground-truth camera poses and a range of
additional data modalities from unmanned aerial vehicle. Our pipeline also
provides flexible controls on environmental factors such as light, weather, and
types and conditions of wildfire, supporting the need for various tasks
covering forest mapping, wildfire emergency response, and beyond. The resulting
pilot dataset, WildfireX-SLAM, contains 5.5k low-altitude RGB-D aerial images
from a large-scale forest map with a total size of 16 km2. On top of
WildfireX-SLAM, a thorough benchmark is also conducted, which not only reveals
the unique challenges of 3DGS-based SLAM in the forest but also highlights
potential improvements for future works. The dataset and code will be publicly
available. Project page: https://zhicongsun.github.io/wildfirexslam.
Authors (3)
Zhicong Sun
Jacqueline Lo
Jinxing Hu
Submitted
October 31, 2025
Key Contributions
WildfireX-SLAM introduces a large-scale, high-quality synthetic dataset specifically designed for SLAM in wildfire and forest environments. It addresses the critical need for such data, which is currently lacking and difficult to collect, enabling research into 3D Gaussian Splatting-based SLAM for these challenging outdoor scenarios.
Business Value
Facilitates the development of advanced navigation and mapping technologies for critical applications like wildfire response and forest management, potentially saving lives and resources.