論文

査読有り
2016年7月25日

Learning to Simplify: Fully Convolutional Networks for Rough Sketch Cleanup

ACM Transactions on Graphics (SIGGRAPH)
  • Edgar Simo-Serra
  • ,
  • Satoshi Iizuka
  • ,
  • Kazuma Sasaki
  • ,
  • Hiroshi Ishikawa

35
4
記述言語
英語
掲載種別
研究論文(学術雑誌)
DOI
10.1145/2897824.2925972
出版者・発行元
Association for Computing Machinery

In this paper, we present a novel technique to simplify sketch drawings based on learning a series of convolution operators. In contrast to existing approaches that require vector images as input, we allow the more general and challenging input of rough raster sketches such as those obtained from scanning pencil sketches. We convert the rough sketch into a simplified version which is then amendable for vectorization. This is all done in a fully automatic way without user intervention. Our model consists of a fully convolutional neural network which, unlike most existing convolutional neural networks, is able to process images of any dimensions and aspect ratio as input, and outputs a simplified sketch which has the same dimensions as the input image. In order to teach our model to simplify, we present a new dataset of pairs of rough and simplified sketch drawings. By leveraging convolution operators in combination with efficient use of our proposed dataset, we are able to train our sketch simplification model. Our approach naturally overcomes the limitations of existing methods, e.g., vector images as input and long computation time
and we show that meaningful simplifications can be obtained for many different test cases. Finally, we validate our results with a user study in which we greatly outperform similar approaches and establish the state of the art in sketch simplification of raster images.

リンク情報
DOI
https://doi.org/10.1145/2897824.2925972
ID情報
  • DOI : 10.1145/2897824.2925972
  • ISSN : 1557-7368
  • ISSN : 0730-0301
  • SCOPUS ID : 84979964959

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