CVJun 2, 2025

Learning Video Generation for Robotic Manipulation with Collaborative Trajectory Control

arXiv:2506.01943v229 citationsh-index: 20
Originality Highly original
AI Analysis

This work improves video generation for robotic decision-making by enabling better control over multi-object interactions, which is crucial for complex manipulation tasks.

The paper tackled the problem of generating videos for robotic manipulation with trajectory control, addressing limitations in capturing multi-object interactions, and achieved new state-of-the-art performance on the Bridge V2 dataset and in-the-wild evaluations.

Recent advances in video diffusion models have demonstrated strong potential for generating robotic decision-making data, with trajectory conditions further enabling fine-grained control. However, existing trajectory-based methods primarily focus on individual object motion and struggle to capture multi-object interaction crucial in complex robotic manipulation. This limitation arises from multi-feature entanglement in overlapping regions, which leads to degraded visual fidelity. To address this, we present RoboMaster, a novel framework that models inter-object dynamics through a collaborative trajectory formulation. Unlike prior methods that decompose objects, our core is to decompose the interaction process into three sub-stages: pre-interaction, interaction, and post-interaction. Each stage is modeled using the feature of the dominant object, specifically the robotic arm in the pre- and post-interaction phases and the manipulated object during interaction, thereby mitigating the drawback of multi-object feature fusion present during interaction in prior work. To further ensure subject semantic consistency throughout the video, we incorporate appearance- and shape-aware latent representations for objects. Extensive experiments on the challenging Bridge V2 dataset, as well as in-the-wild evaluation, demonstrate that our method outperforms existing approaches, establishing new state-of-the-art performance in trajectory-controlled video generation for robotic manipulation.

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