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A new perspective: Recognizing online handwritten Chinese characters via 1-dimensional CNN

机译:一个新的视角:通过1维CNN识别在线手写汉字

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摘要

For online handwritten Chinese character recognition (OLHCCR), it has become a popular choice to employ the 2-dimensional convolutional neural network (2-D CNN) in recognizing the extracted feature images or utilize the recurrent neural network (RNN) to classify handwriting trajectories directly. Instead, here we propose to apply the 1-dimensional CNN (1-D CNN), which, to our knowledge, is novel in the context of OLHCCR. Specifically, a 1-D CNN is engaged upon the sequential handwriting trajectories. Each output sequence is then averaged over time to form a fixed-size vector representation, upon which the final classification is made via a softmax operation. Compared with the 2-D CNN architecture, our approach is capable of delivering better results with a more compact model. This is achieved without adopting the computationally demanding techniques that are necessary when working with the 2-D CNN, including data augmentation and feature image extraction. Furthermore, our method attains a faster test time speed compared with the RNN, and this is more pronounced in processing long sequences. Empirically, our method yields the near-state-of-the-art accuracy of 98.11% on ICDAR 2013 competition dataset, and the state-of-the-art accuracy of 97.14% on in-air handwriting dataset IAHCC-UCAS2016, respectively. (C) 2018 Elsevier Inc. All rights reserved.
机译:对于在线手写的汉字识别(OLHCCR),它已成为采用二维卷积神经网络(2-D CNN)识别提取的特征图像或利用经常性神经网络(RNN)来分类手写轨迹的流行选择直接地。相反,在这里,我们建议应用于我们知识的1维CNN(1-D CNN)在OlHCCR的背景下是新颖的。具体地,1-D CNN接合在顺序手写轨迹上。然后随着时间的推移平均每个输出序列以形成固定尺寸的矢量表示,通过软制动作进行最终分类。与2-D CNN架构相比,我们的方法能够通过更紧凑的模型提供更好的结果。在不采用使用二维CNN时所需的计算所需的计算,包括数据增强和特征图像提取。此外,与RNN相比,我们的方法达到了更快的测试时间速度,并且在处理长序列时更加明显。经验,我们的方法在ICDAR 2013竞争数据集中产生了98.11%的近最先义的准确性,以及在空中手写数据集IAHCC-UCAS2016上的最先进的准确性为97.14%。 (c)2018年Elsevier Inc.保留所有权利。

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