Vision-Language Model for Accurate Crater Detection
Patrick Bauer, Marius Schwinning, Florian Renk, Andreas Weinmann, Hichem Snoussi

TL;DR
This paper introduces a vision-language deep learning model based on Vision Transformers for accurate lunar crater detection, addressing challenges of variable crater sizes and challenging imaging conditions, with high recall and precision.
Contribution
It presents a novel crater detection approach using OWLv2 with parameter-efficient fine-tuning and combined loss functions, improving detection accuracy in lunar imagery.
Findings
Maximum recall of 94.0% achieved
Maximum precision of 73.1% achieved
Reliable detection across challenging lunar images
Abstract
The European Space Agency (ESA), driven by its ambitions on planned lunar missions with the Argonaut lander, has a profound interest in reliable crater detection, since craters pose a risk to safe lunar landings. This task is usually addressed with automated crater detection algorithms (CDA) based on deep learning techniques. It is non-trivial due to the vast amount of craters of various sizes and shapes, as well as challenging conditions such as varying illumination and rugged terrain. Therefore, we propose a deep-learning CDA based on the OWLv2 model, which is built on a Vision Transformer, that has proven highly effective in various computer vision tasks. For fine-tuning, we utilize a manually labeled dataset fom the IMPACT project, that provides crater annotations on high-resolution Lunar Reconnaissance Orbiter Camera Calibrated Data Record images. We insert trainable parameters…
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Taxonomy
TopicsPlanetary Science and Exploration · Astro and Planetary Science · Space Satellite Systems and Control
