OceanBench: The Sea Surface Height Edition
J. Emmanuel Johnson, Quentin Febvre, Anastasia Gorbunova, Sammy, Metref, Maxime Ballarotta, Julien Le Sommer, Ronan Fablet

TL;DR
OceanBench is a standardized, flexible framework that streamlines the processing, benchmarking, and extension of machine learning models for sea surface height interpolation using satellite data, addressing challenges like data sparsity and noise.
Contribution
It introduces a comprehensive, domain-compliant pipeline framework for ML research on ocean satellite data, facilitating benchmarking and customization.
Findings
Provides datasets and ML pipelines for SSH interpolation
Addresses multi-modal and multi-sensor fusion challenges
Enables transfer learning to real satellite observations
Abstract
The ocean profoundly influences human activities and plays a critical role in climate regulation. Our understanding has improved over the last decades with the advent of satellite remote sensing data, allowing us to capture essential quantities over the globe, e.g., sea surface height (SSH). However, ocean satellite data presents challenges for information extraction due to their sparsity and irregular sampling, signal complexity, and noise. Machine learning (ML) techniques have demonstrated their capabilities in dealing with large-scale, complex signals. Therefore we see an opportunity for ML models to harness the information contained in ocean satellite data. However, data representation and relevant evaluation metrics can be the defining factors when determining the success of applied ML. The processing steps from the raw observation data to a ML-ready state and from model outputs to…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Code & Models
Videos
Taxonomy
TopicsOceanographic and Atmospheric Processes · Ocean Waves and Remote Sensing · Underwater Acoustics Research
