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Handwritten Chinese character recognition with spatial transformer and deep residual networks

机译:具有空间变换器和深度残差网络的手写汉字识别

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This paper considers using deep neural networks for handwritten Chinese character recognition (HCCR) with arbitrary position, scale, and orientations. To solve this problem, we combine the recently proposed spatial transformer network (STN) with the deep residual network (DRN). The STN acts like a character shape normalization procedure. Different from the traditional heuristic shape normalization methods, STN is learned directly from the data. Furthermore, the DRN makes the training of very deep network to be both efficient and effective. With the combination of STN and DRN, the whole model can be trained jointly in an end-to-end manner. In this paper, new state-of-the-art performance has been achieved by our proposed model on the offline ICDAR-2013 Chinese handwriting competition database. Moreover, the experiment on randomly distorted samples shows that the STN is very effective for robust HCCR in rectifying the shape of distorted characters.
机译:本文考虑将深度神经网络用于具有任意位置,比例和方向的手写汉字识别(HCCR)。为了解决这个问题,我们将最近提出的空间变压器网络(STN)与深度残差网络(DRN)相结合。 STN的作用类似于字符形状归一化过程。与传统的启发式形状归一化方法不同,STN是直接从数据中学习的。此外,DRN使非常深入的网络训练变得既高效又有效。通过STN和DRN的组合,可以以端到端的方式联合训练整个模型。在本文中,通过我们在离线ICDAR-2013中国手写竞赛数据库中提出的模型,实现了最新的性能。此外,对随机失真的样本进行的实验表明,STN对于纠正失真字符形状的鲁棒性HCCR非常有效。

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