English

OpenGVL -- Benchmarking Visual Temporal Progress for Data Curation

Robotics 2026-02-10 v4 Computation and Language

Abstract

Data scarcity remains one of the most limiting factors in driving progress in robotics. However, the amount of available robotics data in the wild is growing exponentially, creating new opportunities for large-scale data utilization. Reliable temporal task completion prediction could help automatically annotate and curate this data at scale. The Generative Value Learning (GVL) approach was recently proposed, leveraging the knowledge embedded in vision-language models (VLMs) to predict task progress from visual observations. Building upon GVL, we propose OpenGVL, a comprehensive benchmark for estimating task progress across diverse challenging manipulation tasks involving both robotic and human embodiments. We evaluate the capabilities of publicly available open-source foundation models, showing that open-source model families significantly underperform closed-source counterparts, achieving only approximately 70%70\% of their performance on temporal progress prediction tasks. Furthermore, we demonstrate how OpenGVL can serve as a practical tool for automated data curation and filtering, enabling efficient quality assessment of large-scale robotics datasets. We release the benchmark along with the complete codebase at \href{github.com/budzianowski/opengvl}{OpenGVL}.

Keywords

Cite

@article{arxiv.2509.17321,
  title  = {OpenGVL -- Benchmarking Visual Temporal Progress for Data Curation},
  author = {Paweł Budzianowski and Emilia Wiśnios and Michał Tyrolski and Gracjan Góral and Igor Kulakov and Viktor Petrenko and Krzysztof Walas},
  journal= {arXiv preprint arXiv:2509.17321},
  year   = {2026}
}

Comments

Workshop on Making Sense of Data in Robotics: Composition, Curation, and Interpretability at Scale at CoRL 2025

R2 v1 2026-07-01T05:48:45.665Z