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Distilling GRU with Data Augmentation for Unconstrained Handwritten Text Recognition

机译:借助数据增强提取GRU以实现无约束的手写文本识别

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Handwritten texts with various styles, such as horizontal, overlapping, vertical, and multi-lines texts, are commonly observed in the community. However, most existing handwriting recognition methods only concentrate on one specific kind of text style. In this paper, we focus on the problem of new unconstrained handwritten text recognition and propose distilling gated recurrent unit (GRU) with a new data augmentation technology to model the complex sequential dynamic of unconstrained handwriting text of various styles. The proposed data augmentation method can synthesize realistic handwritten text datasets including horizontal, vertical, overlap, right-down, screw-rotation, and multi-line situation, which render our framework robust for general purposes. The recommended distilling GRU can not only accelerate the training speed through the distilling stage but also maintain the original recognition accuracy. Experiments on our synthesized handwritten test sets show that the proposed multi-layer GRU performs well on the unconstrained handwriting text recognition problem. On the ICDAR2013 handwritten text recognition benchmark dataset, the proposed framework demonstrates comparable performance with state-of-the-art techniques.
机译:在社区中通常会观察到各种样式的手写文本,例如水平,重叠,垂直和多行文本。但是,大多数现有的手写识别方法仅专注于一种特定类型的文本样式。在本文中,我们着眼于新的无约束手写文本识别问题,并提出了一种利用新的数据增强技术提取门控循环单元(GRU),以建模各种样式的无约束手写文本的复杂顺序动态。所提出的数据扩充方法可以合成现实的手写文本数据集,包括水平,垂直,重叠,右下,螺丝旋转和多行情况,这使我们的框架具有强大的通用性。推荐的蒸馏GRU不仅可以在整个蒸馏阶段提高训练速度,还可以保持原始识别精度。在我们的综合手写测试集上进行的实验表明,所提出的多层GRU在无约束的手写文本识别问题上表现良好。在ICDAR2013手写文本识别基准数据集上,提出的框架展示了与最新技术可比的性能。

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