论文标题

在线轨迹从离线手写日本汉字角色恢复

Online trajectory recovery from offline handwritten Japanese kanji characters

论文作者

Nguyen, Hung Tuan, Nakamura, Tsubasa, Nguyen, Cuong Tuan, Nakagawa, Masaki

论文摘要

通常,从在线手写模式中渲染离线手写图像是很简单的。但是,在脱机手写图像中重建在线手写模式是一个挑战,尤其是对于日本汉字的多冲程角色。多冲程特征不仅需要点坐标,还需要中风的中风顺序,即中风的数量。此外,几个交叉和接触点可能会增加恢复任务的困难。我们提出了一种基于神经网络的深度方法,可以使用大型在线手写数据库来解决恢复的任务。我们提出的模型有两个主要组成部分:基于卷积神经网络的编码器和带有注意力层的长期短期内存网络解码器。编码器专注于特征提取,而解码器是指提取的特征并生成坐标的时间序列。我们还展示了注意力层的效果,以指导重建过程中的解码器。我们通过视觉验证和手写字符识别来评估所提出方法的性能。尽管视觉验证揭示了一些问题,但识别实验证明了轨迹恢复在提高离线手写字符识别准确性时的效果时,当在线识别回收轨迹的在线识别。

In general, it is straightforward to render an offline handwriting image from an online handwriting pattern. However, it is challenging to reconstruct an online handwriting pattern given an offline handwriting image, especially for multiple-stroke character as Japanese kanji. The multiple-stroke character requires not only point coordinates but also stroke orders whose difficulty is exponential growth by the number of strokes. Besides, several crossed and touch points might increase the difficulty of the recovered task. We propose a deep neural network-based method to solve the recovered task using a large online handwriting database. Our proposed model has two main components: Convolutional Neural Network-based encoder and Long Short-Term Memory Network-based decoder with an attention layer. The encoder focuses on feature extraction while the decoder refers to the extracted features and generates the time-sequences of coordinates. We also demonstrate the effect of the attention layer to guide the decoder during the reconstruction. We evaluate the performance of the proposed method by both visual verification and handwritten character recognition. Although the visual verification reveals some problems, the recognition experiments demonstrate the effect of trajectory recovery in improving the accuracy of offline handwritten character recognition when online recognition for the recovered trajectories are combined.

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