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논문 리스트

2019
Sketch Recognition Using LSTM with Attention Mechanism and Minimum Cost Flow Algorithm Sketch Recognition Using LSTM with Attention Mechanism and Minimum Cost Flow Algorithm
한국콘텐츠학회
논문정보
Publisher
International Journal of Contents
Issue Date
2019-12-31
Keywords
-
Citation
-
Source
-
Journal Title
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Volume
15
Number
4
Start Page
8
End Page
15
DOI
ISSN
17386764
Abstract
This paper presents a solution of the ‘Quick, Draw! Doodle Recognition Challenge’ hosted by Google. Doodles are drawings comprised of concrete representational meaning or abstract lines creatively expressed by individuals. In this challenge, a doodle is presented as a sequence of sketches. From the view of at the sketch level, to learn the pattern of strokes representing a doodle, we propose a sequential model stacked with multiple convolution layers and Long Short-Term Memory (LSTM) cells following the attention mechanism [15]. From the view at the image level, we use multiple models pre-trained on ImageNet to recognize the doodle. Finally, an ensemble and a post-processing method using the minimum cost flow algorithm are introduced to combine multiple models in achieving better results. In this challenge, our solutions garnered 11th place among 1,316 teams. Our performance was 0.95037 MAP@3, only 0.4% lower than the winner. It demonstrates that our method is very competitive. The source code for this competition is published at: https://github.com/ngxbac/Kaggle-QuickDraw.

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