Radical Aggregation Network for Few-Shot Offline Handwritten Chinese Character Recognition

PATTERN RECOGNITION LETTERS(2019)

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摘要
Offline handwritten Chinese character recognition has attracted much interest due to its various applications. The most cutting-edge methods treat Chinese character as a whole, ignoring the structures and radicals that compose characters. To use the radical-level composition of Chinese characters and achieve few-shot/zero-shot Chinese character recognition, some methods attempt to recognize Chinese characters at the radical level; however, these methods have shown poor performance due to weak radical feature representation and the use of inflexible decoding algorithm. In this paper, a novel radical aggregation network (RAN) is proposed for few-shot/zero-shot offline handwritten Chinese character recognition. The RAN consists of three components, a radical mapping encoder (RME), a radical aggregation module (RAM), and a character analysis decoder (CAD). Experiments show that our method can effectively recognize unseen handwritten characters given few support samples, while maintaining a high performance on seen characters. (C) 2019 The Authors. Published by Elsevier B.V.
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关键词
Handwritten Chinese character recognition,Chinese radical recognition,Deep learning,Few-shot learning
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