arXiv Open Access 2026

IMPASTO: Integrating Model-Based Planning with Learned Dynamics Models for Robotic Oil Painting Reproduction

Yingke Wang Hao Li Yifeng Zhu Hong-Xing Yu Ken Goldberg +4 lainnya
Lihat Sumber

Abstrak

Robotic reproduction of oil paintings using soft brushes and pigments requires force-sensitive control of deformable tools, prediction of brushstroke effects, and multi-step stroke planning, often without human step-by-step demonstrations or faithful simulators. Given only a sequence of target oil painting images, can a robot infer and execute the stroke trajectories, forces, and colors needed to reproduce it? We present IMPASTO, a robotic oil-painting system that integrates learned pixel dynamics models with model-based planning. The dynamics models predict canvas updates from image observations and parameterized stroke actions; a receding-horizon model predictive control optimizer then plans trajectories and forces, while a force-sensitive controller executes strokes on a 7-DoF robot arm. IMPASTO integrates low-level force control, learned dynamics models, and high-level closed-loop planning, learns solely from robot self-play, and approximates human artists' single-stroke datasets and multi-stroke artworks, outperforming baselines in reproduction accuracy. Project website: https://impasto-robopainting.github.io/

Topik & Kata Kunci

Penulis (9)

Y

Yingke Wang

H

Hao Li

Y

Yifeng Zhu

H

Hong-Xing Yu

K

Ken Goldberg

L

Li Fei-Fei

J

Jiajun Wu

Y

Yunzhu Li

R

Ruohan Zhang

Format Sitasi

Wang, Y., Li, H., Zhu, Y., Yu, H., Goldberg, K., Fei-Fei, L. et al. (2026). IMPASTO: Integrating Model-Based Planning with Learned Dynamics Models for Robotic Oil Painting Reproduction. https://arxiv.org/abs/2603.29315

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Tahun Terbit
2026
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en
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arXiv
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Open Access ✓