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Learning to group discrete graphical patterns

  • Zhaoliang Lun
  • , Changqing Zou
  • , Haibin Huang
  • , Evangelos Kalogerakis
  • , Ping Tan
  • , Marie Paule Cani
  • , Hao Zhang
  • UMass Amherst
  • Simon Fraser University

Résultats de recherche: Contribution à un journalArticle de conférenceRevue par des pairs

Résumé

We introduce a deep learning approach for grouping discrete patterns common in graphical designs. Our approach is based on a convolutional neural network architecture that learns a grouping measure defined over a pair of pattern elements. Motivated by perceptual grouping principles, the key feature of our network is the encoding of element shape, context, symmetries, and structural arrangements. These element properties are all jointly considered and appropriately weighted in our grouping measure. To better align our measure with human perceptions for grouping, we train our network on a large, human-annotated dataset of pattern groupings consisting of patterns at varying granularity levels, with rich element relations and varieties, and tempered with noise and other data imperfections. Experimental results demonstrate that our deep-learned measure leads to robust grouping results.

langue originaleAnglais
Numéro d'articlea225
journalACM Transactions on Graphics
Volume36
Numéro de publication6
Les DOIs
étatPublié - 20 nov. 2017
EvénementACM SIGGRAPH Asia Conference, SA 2017 - Bangkok, Thadlande
Durée: 27 nov. 201730 nov. 2017

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