CraterBench-R: Instance-Level Crater Retrieval for Planetary Scale
Jichao Fang, Lei Zhang, Michael Phillips, Wei Luo

TL;DR
CraterBench-R introduces an instance-level crater retrieval benchmark and scalable methods, leveraging Vision Transformers and token aggregation to improve planetary surface analysis efficiency and accuracy.
Contribution
This work formulates crater analysis as an instance retrieval problem, introduces a large benchmark, and proposes scalable token aggregation methods for planetary-scale crater retrieval.
Findings
Self-supervised ViTs outperform generic models in crater retrieval.
Retaining multiple tokens with late-interaction improves accuracy.
Instance-token aggregation enhances scalability with minimal accuracy loss.
Abstract
Impact craters are a cornerstone of planetary surface analysis. However, while most deep learning pipelines treat craters solely as a detection problem, critical scientific workflows such as catalog deduplication, cross-observation matching, and morphological analog discovery are inherently retrieval tasks. To address this, we formulate crater analysis as an instance-level image retrieval problem and introduce CraterBench-R, a curated benchmark featuring about 25,000 crater identities with multi-scale gallery views and manually verified queries spanning diverse scales and contexts. Our baseline evaluations across various architectures reveal that self-supervised Vision Transformers (ViTs), particularly those with in-domain pretraining, dominate the task, outperforming generic models with significantly more parameters. Furthermore, we demonstrate that retaining multiple ViT patch tokens…
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