Emulating Artistic Expressions in Robot Painting: A Stroke-Based Approach

Author:

Wang Zihe1ORCID,Li Linzhou1,Zhang Tan1ORCID,Liu Tengfei1,Li Ming2,Wang Zifan1,Li Zixiang1

Affiliation:

1. Sino-German College of Intelligent Manufacturing, Shenzhen Technology University, 3002 Lantian Road, Shenzhen 518000, China

2. Visual Computing Center, Shenzhen University, 3688 Nanhai Avenue, Shenzhen 518000, China

Abstract

Representing art using a robotic system is part of artificial intelligence in our lives, especially in the realm of emotional expression. Developing a painting robot involves addressing how to enable the robot to emulate human artistic processes, which often include imprecise techniques or errors akin to those made by human artists. This paper discusses our development of an innovative painting robot utilizing the sim-to-real approach within learning technology. Specifically, this pipeline operates under a deep reinforcement learning (DRL) framework designed to learn drawing strategies from training data derived from real-world settings, aiming for the robot’s proficiency in emulating human artistic expressions. Accordingly, the framework comprises two modules when given a target drawing image: the first module trains in a simulated environment to break down the target image into individual strokes; the second module then learns how to execute these strokes in a real environment. Our experiments have shown that this system can meet our objectives effectively.

Funder

Shenzhen Foundation for International Exchange and Cooperation

Industry–University–Research Fund

Publisher

MDPI AG

Reference25 articles.

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4. Zhou, T., Fang, C., Wang, Z., Yang, Z., Kim, B., Chen, Z., Brandt, J., and Terzopoulos, D. (2018). Learning to doodle with deep q networks and demonstrated strokes. arXiv.

5. Zheng, N., Jiang, Y., and Huang, D. (2019, January 6–9). StrokeNet: A Neural Painting Environment. Proceedings of the International Conference on Learning Representations(ICLR), New Orleans, LA, USA.

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