TY - JOUR
T1 - Video-Language Critic : Transferable Reward Functions for Language-Conditioned Robotics
AU - Alakuijala, Minttu
AU - McLean, Reginald
AU - Woungang, Isaac
AU - Farsad, Nariman
AU - Kaski, Samuel
AU - Marttinen, Pekka
AU - Yuan, Kai
N1 - Publisher Copyright: © 2025, Transactions on Machine Learning Research.
PY - 2025
Y1 - 2025
N2 - Natural language is often the easiest and most convenient modality for humans to specify tasks for robots. However, learning to ground language to behavior typically requires impractical amounts of diverse, language-annotated demonstrations collected on each target robot. In this work, we aim to separate the problem of what to accomplish from how to accomplish it, as the former can benefit from substantial amounts of external observation-only data, and only the latter depends on a specific robot embodiment. To this end, we propose Video-Language Critic, a reward model that can be trained on readily available cross-embodiment data using contrastive learning and a temporal ranking objective, and use it to score behavior traces from a separate actor. When trained on Open X-Embodiment data, our reward model enables 2x more sample-efficient policy training on Meta-World tasks than a sparse reward only, despite a significant domain gap. Using in-domain data but in a challenging task generalization setting on Meta-World, we further demonstrate more sample-efficient training than is possible with prior language-conditioned reward models that are either trained with binary classification, use static images, or do not leverage the temporal information present in video data.1.
AB - Natural language is often the easiest and most convenient modality for humans to specify tasks for robots. However, learning to ground language to behavior typically requires impractical amounts of diverse, language-annotated demonstrations collected on each target robot. In this work, we aim to separate the problem of what to accomplish from how to accomplish it, as the former can benefit from substantial amounts of external observation-only data, and only the latter depends on a specific robot embodiment. To this end, we propose Video-Language Critic, a reward model that can be trained on readily available cross-embodiment data using contrastive learning and a temporal ranking objective, and use it to score behavior traces from a separate actor. When trained on Open X-Embodiment data, our reward model enables 2x more sample-efficient policy training on Meta-World tasks than a sparse reward only, despite a significant domain gap. Using in-domain data but in a challenging task generalization setting on Meta-World, we further demonstrate more sample-efficient training than is possible with prior language-conditioned reward models that are either trained with binary classification, use static images, or do not leverage the temporal information present in video data.1.
UR - http://www.scopus.com/inward/record.url?scp=85219315188&partnerID=8YFLogxK
M3 - Article
AN - SCOPUS:85219315188
SN - 2835-8856
VL - 2025
SP - 1
EP - 22
JO - Transactions on Machine Learning Research
JF - Transactions on Machine Learning Research
ER -