S-EO: A Large-Scale Dataset for Geometry-Aware Shadow Detection in Remote Sensing Applications
By: Elías Masquil , Roger Marí , Thibaud Ehret and more
Potential Business Impact:
Helps computers see shadows in pictures.
We introduce the S-EO dataset: a large-scale, high-resolution dataset, designed to advance geometry-aware shadow detection. Collected from diverse public-domain sources, including challenge datasets and government providers such as USGS, our dataset comprises 702 georeferenced tiles across the USA, each covering 500x500 m. Each tile includes multi-date, multi-angle WorldView-3 pansharpened RGB images, panchromatic images, and a ground-truth DSM of the area obtained from LiDAR scans. For each image, we provide a shadow mask derived from geometry and sun position, a vegetation mask based on the NDVI index, and a bundle-adjusted RPC model. With approximately 20,000 images, the S-EO dataset establishes a new public resource for shadow detection in remote sensing imagery and its applications to 3D reconstruction. To demonstrate the dataset's impact, we train and evaluate a shadow detector, showcasing its ability to generalize, even to aerial images. Finally, we extend EO-NeRF - a state-of-the-art NeRF approach for satellite imagery - to leverage our shadow predictions for improved 3D reconstructions.
Similar Papers
SSL4EO-S12 v1.1: A Multimodal, Multiseasonal Dataset for Pretraining, Updated
CV and Pattern Recognition
Helps computers learn about Earth from pictures.
SegEarth-R1: Geospatial Pixel Reasoning via Large Language Model
CV and Pattern Recognition
Lets computers understand maps from descriptions.
Hyperspectral Remote Sensing Images Salient Object Detection: The First Benchmark Dataset and Baseline
CV and Pattern Recognition
Finds important things in pictures from space.