Space-LLaVA: a Vision-Language Model Adapted to Extraterrestrial Applications
Matthew Foutter, Daniele Gammelli, Justin Kruger, Ethan Foss, Praneet, Bhoj, Tommaso Guffanti, Simone D'Amico, Marco Pavone

TL;DR
This paper adapts a vision-language foundation model for extraterrestrial environments by augmenting datasets with scientific annotations and fine-tuning to improve space robotics tasks.
Contribution
It introduces a method to adapt and fine-tune a large vision-language model for space applications using synthetic extraterrestrial datasets.
Findings
Enhanced zero-shot performance on space-related tasks.
Fine-tuning both language and vision components is crucial.
Small data subsets can prevent catastrophic forgetting.
Abstract
Foundation Models (FMs), e.g., large language models, possess attributes of intelligence which offer promise to endow a robot with the contextual understanding necessary to navigate complex, unstructured tasks in the wild. We see three core challenges in the future of space robotics that motivate building an FM for the space robotics community: 1) Scalability of ground-in-the-loop operations; 2) Generalizing prior knowledge to novel environments; and 3) Multi-modality in tasks and sensor data. As a first-step towards a space foundation model, we programmatically augment three extraterrestrial databases with fine-grained language annotations inspired by the sensory reasoning necessary to e.g., identify a site of scientific interest on Mars, building a synthetic dataset of visual-question-answer and visual instruction-following tuples. We fine-tune a pre-trained LLaVA 13B checkpoint on…
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Taxonomy
TopicsSpacecraft Design and Technology
MethodsAdapter
