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Main Authors: Nguyen, Toan, Yuan, Weiduo, Wei, Songlin, Li, Hui, Seita, Daniel, Wang, Yue
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.07530
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author Nguyen, Toan
Yuan, Weiduo
Wei, Songlin
Li, Hui
Seita, Daniel
Wang, Yue
author_facet Nguyen, Toan
Yuan, Weiduo
Wei, Songlin
Li, Hui
Seita, Daniel
Wang, Yue
contents In-context imitation learning enables robots to adapt to new tasks from a small number of demonstrations without additional training. However, existing approaches typically condition only on state-action trajectories and lack explicit representations of task intent. This limitation hinders performance in complex and ambiguous task settings where the same actions may be consistent with different objectives. To address this, we present In-Context Imitation Learning with Visual Reasoning (ICLR), a novel framework that augments demonstration prompts with structured visual reasoning traces representing anticipated future robot trajectories in image space. ICLR also jointly learns to generate reasoning traces and low-level actions within a unified autoregressive transformer, enabling the model to mimic not only action prediction but also the reasoning process that leads to those actions. We extensively evaluate ICLR in both simulation and real-world manipulation tasks and demonstrate consistent improvements in success rates and generalization to unseen tasks and novel object configurations compared to other in-context imitation learning methods. These results suggest that incorporating embodied visual reasoning represents a promising direction for enhancing the robustness and generalization of robotic in-context learning systems.
format Preprint
id arxiv_https___arxiv_org_abs_2603_07530
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle ICLR: In-Context Imitation Learning with Visual Reasoning
Nguyen, Toan
Yuan, Weiduo
Wei, Songlin
Li, Hui
Seita, Daniel
Wang, Yue
Robotics
In-context imitation learning enables robots to adapt to new tasks from a small number of demonstrations without additional training. However, existing approaches typically condition only on state-action trajectories and lack explicit representations of task intent. This limitation hinders performance in complex and ambiguous task settings where the same actions may be consistent with different objectives. To address this, we present In-Context Imitation Learning with Visual Reasoning (ICLR), a novel framework that augments demonstration prompts with structured visual reasoning traces representing anticipated future robot trajectories in image space. ICLR also jointly learns to generate reasoning traces and low-level actions within a unified autoregressive transformer, enabling the model to mimic not only action prediction but also the reasoning process that leads to those actions. We extensively evaluate ICLR in both simulation and real-world manipulation tasks and demonstrate consistent improvements in success rates and generalization to unseen tasks and novel object configurations compared to other in-context imitation learning methods. These results suggest that incorporating embodied visual reasoning represents a promising direction for enhancing the robustness and generalization of robotic in-context learning systems.
title ICLR: In-Context Imitation Learning with Visual Reasoning
topic Robotics
url https://arxiv.org/abs/2603.07530