Stroke-Based Stylization Learning and Rendering with Inverse Reinforcement Learning.

Xie, N., Zhao, T., Tian, F., Zhang, X. H. and Sugiyam, M., 2015. Stroke-Based Stylization Learning and Rendering with Inverse Reinforcement Learning. In: International Joint Conference on Artificial Intelligence, 25--31 July 2015, Buenos Aires, Argentina.

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Abstract

Among various traditional art forms, brush stroke drawing is one of the widely used styles in modern computer graphic tools such as GIMP, Photoshop and Painter. In this paper, we develop an AI-aided art authoring (A4) system of non- photorealistic rendering that allows users to automatically generate brush stroke paintings in a specific artist’s style. Within the reinforcement learning framework of brush stroke generation proposed by Xie et al.[Xie et al., 2012], our contribution in this paper is to learn artists’ drawing styles from video-captured stroke data by inverse reinforcement learning. Through experiments, we demonstrate that our system can successfully learn artists’ styles and render pictures with consistent and smooth brush strokes.

Item Type:Conference or Workshop Item (Paper)
Subjects:UNSPECIFIED
Group:Faculty of Science and Technology
ID Code:22693
Deposited By: Unnamed user with email symplectic@symplectic
Deposited On:16 Oct 2015 14:49
Last Modified:25 Nov 2015 15:03

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