NeuCo-Bench: A Novel Benchmark Framework for Neural Embeddings in Earth Observation
Vinge, Rikard, Wittmann, Isabelle, Schneider, Jannik, Marszalek, Michael, Gilch, Luis, Brunschwiler, Thomas, Albrecht, Conrad M
–arXiv.org Artificial Intelligence
We introduce NeuCo-Bench, a novel benchmark framework for evaluating (lossy) neural compression and representation learning in the context of Earth Observation (EO). Our approach builds on fixed-size embeddings that act as compact, task-agnostic representations applicable to a broad range of downstream tasks. NeuCo-Bench comprises three core components: (i) an evaluation pipeline built around reusable embeddings, (ii) a new challenge mode with a hidden-task leaderboard designed to mitigate pretraining bias, and (iii) a scoring system that balances accuracy and stability. To support reproducibility, we release SSL4EO-S12-downstream, a curated multispectral, multitemporal EO dataset. We present initial results from a public challenge at the 2025 CVPR EARTHVISION workshop and conduct ablations with state-of-the-art foundation models. NeuCo-Bench provides a first step towards community-driven, standardized evaluation of neural embeddings for EO and beyond.
arXiv.org Artificial Intelligence
Oct-22-2025
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