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Main Authors: Bu, Xizhou, Lyu, Jiexi, Sun, Fulei, Yang, Ruichen, Ma, Zhiqiang, Li, Wei
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.16407
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author Bu, Xizhou
Lyu, Jiexi
Sun, Fulei
Yang, Ruichen
Ma, Zhiqiang
Li, Wei
author_facet Bu, Xizhou
Lyu, Jiexi
Sun, Fulei
Yang, Ruichen
Ma, Zhiqiang
Li, Wei
contents Learning latent actions from large-scale videos is crucial for the pre-training of scalable embodied foundation models, yet existing methods often struggle with action-irrelevant distractors. Although incorporating action supervision can alleviate these distractions, its effectiveness is restricted by the scarcity of available action labels. Optical flow represents pixel-level motion between consecutive frames, naturally suppressing background elements and emphasizing moving objects. Motivated by this, we propose robust Latent Action learning with Optical Flow constraints, called LAOF, a pseudo-supervised framework that leverages the agent's optical flow as an action-driven signal to learn latent action representations robust to distractors. Experimental results show that the latent representations learned by LAOF outperform existing methods on downstream imitation learning and reinforcement learning tasks. This superior performance arises from optical flow constraints, which substantially stabilize training and improve the quality of latent representations under extremely label-scarce conditions, while remaining effective as the proportion of action labels increases to 10 percent. Importantly, even without action supervision, LAOF matches or surpasses action-supervised methods trained with 1 percent of action labels.
format Preprint
id arxiv_https___arxiv_org_abs_2511_16407
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle LAOF: Robust Latent Action Learning with Optical Flow Constraints
Bu, Xizhou
Lyu, Jiexi
Sun, Fulei
Yang, Ruichen
Ma, Zhiqiang
Li, Wei
Robotics
Learning latent actions from large-scale videos is crucial for the pre-training of scalable embodied foundation models, yet existing methods often struggle with action-irrelevant distractors. Although incorporating action supervision can alleviate these distractions, its effectiveness is restricted by the scarcity of available action labels. Optical flow represents pixel-level motion between consecutive frames, naturally suppressing background elements and emphasizing moving objects. Motivated by this, we propose robust Latent Action learning with Optical Flow constraints, called LAOF, a pseudo-supervised framework that leverages the agent's optical flow as an action-driven signal to learn latent action representations robust to distractors. Experimental results show that the latent representations learned by LAOF outperform existing methods on downstream imitation learning and reinforcement learning tasks. This superior performance arises from optical flow constraints, which substantially stabilize training and improve the quality of latent representations under extremely label-scarce conditions, while remaining effective as the proportion of action labels increases to 10 percent. Importantly, even without action supervision, LAOF matches or surpasses action-supervised methods trained with 1 percent of action labels.
title LAOF: Robust Latent Action Learning with Optical Flow Constraints
topic Robotics
url https://arxiv.org/abs/2511.16407