Personal Style Learning in Sumi-e Stroke-based Rendering by Inverse Reinforcement Learning
スポンサーリンク
概要
- 論文の詳細を見る
We consider the problem of automatically generating sumi-e style drawings using machine learning techniques. In our previous work, we regarded a brush as a computer agent and trained the brush to generate smooth strokes to fill given boundaries under a pre-designed cost function. In this paper, we extend this approach and propose to also learn the cost function from a user's real brush stroke data by inverse reinforcement learning. This extension allows the brush agent to imitate the personal drawing style of a user. The effectiveness of our method is demonstrated through experiments.
- 2013-11-21
著者
-
Ning Xie
Department Of Computer Science Tokyo Institute Of Technology
-
Masashi Sugiyama
Tokyo Institute of Technology
-
Ning Xie
Tokyo Institute of Technology
-
Tingting Zhao
Tokyo Institute of Technology
関連論文
- Artist Agent A2: Stroke Painterly Rendering Based on Reinforcement Learning
- Personal Style Learning in Sumi-e Stroke-based Rendering by Inverse Reinforcement Learning
- Personal Style Learning in Sumi-e Stroke-based Rendering by Inverse Reinforcement Learning