DreamArrangement:通过去噪扩散和VLM规划器学习语言条件化的机器人物体重排

DreamArrangement: Learning Language-Conditioned Robotic Rearrangement of Objects via Denoising Diffusion and VLM Planner

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2025
被引 0
ABS 3

中文导读

提出DreamArrangement方法,结合扩散模型和视觉语言模型,使机器人能根据语言指令高效重排桌面物体,并迁移到真实世界执行长时域任务。

Abstract

The capability for robotic systems to rearrange objects based on human instructions represents a critical step toward realizing embodied intelligence. Recently, diffusion-based learning has shown significant advancements in the field of data generation while prompt-based learning has proven effective in formulating robot manipulation strategies. However, prior solutions for robotic rearrangement have overlooked the significance of integrating human preferences and optimizing for rearrangement efficiency. Additionally, traditional prompt-based approaches struggle with complex, semantically meaningful rearrangement tasks without predefined target states for objects. To address these challenges, our work first introduces a comprehensive two dimensional (2-D) tabletop rearrangement dataset, utilizing a physical simulator to capture interobject relationships and semantic configurations. Then, we present DreamArrangement, a novel language-conditioned object rearrangement scheme, consisting of two primary processes: employing a transformer-based multimodal denoising diffusion model to envisage the desired arrangement of objects, and leveraging a vision–language foundational model to derive actionable policies from text, alongside initial and target visual information. In particular, we introduce an efficiency-oriented learning strategy to minimize the average motion distance of objects. Given few-shot instruction examples, the learned policy from our synthetic dataset can be transferred to the real world without extra human intervention. Extensive simulations validate DreamArrangement’s superior rearrangement quality and efficiency. Moreover, real-world robotic experiments confirm that our method can adeptly execute a range of challenging, language-conditioned, and long-horizon tasks with a singular model. The demonstration video can be found at https://youtu.be/fq25-DjrbQE

机器人学物体重排扩散模型视觉语言模型人机交互