AstroLoc: Robust Space to Ground Image Localizer
Gabriele Berton, Alex Stoken, Carlo Masone

TL;DR
AstroLoc is a novel space-to-ground image localization method that leverages astronaut photos for training, significantly improving accuracy over previous approaches and demonstrating versatility in related tasks.
Contribution
This work introduces the first APL pipeline that uses astronaut photos for training, enhancing localization accuracy with a new dataset and a dual-loss training approach.
Findings
35% improvement in recall@1 over SOTA
Recall@100 consistently over 99%
Effective for related localization tasks
Abstract
Astronauts take thousands of photos of Earth per day from the International Space Station, which, once localized on Earth's surface, are used for a multitude of tasks, ranging from climate change research to disaster management. The localization process, which has been performed manually for decades, has recently been approached through image retrieval solutions: given an astronaut photo, find its most similar match among a large database of geo-tagged satellite images, in a task called Astronaut Photography Localization (APL). Yet, existing APL approaches are trained only using satellite images, without taking advantage of the millions open-source astronaut photos. In this work we present the first APL pipeline capable of leveraging astronaut photos for training. We first produce full localization information for 300,000 manually weakly labeled astronaut photos through an automated…
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Taxonomy
TopicsImage Processing and 3D Reconstruction · Advanced Research in Science and Engineering · Planetary Science and Exploration
