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Bidirectional Decoder Networks for Attention-Based End-to-End Offline Handwriting Recognition

机译:双向解码器网络,用于基于注意力的端到端离线手写识别

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Recurrent neural networks that can be trained end-to-end on sequence learning tasks provide promising benefits over traditional recognition systems. In this paper, we demonstrate the application of an attention-based long short-term memory decoder network for offline handwriting recognition and analyze the segmentation, classification and decoding errors produced by the model. We further extend the decoding network by a bidirectional topology together with an integrated length estimation procedure and show that it is superior to unidirectional decoder networks. Results are presented for the word and text line recognition tasks of the RIMES handwriting recognition database. The software used in the experiments is freely available for academic research purposes.
机译:可以在序列学习任务上进行端到端训练的循环神经网络,与传统的识别系统相比,具有可观的优势。在本文中,我们演示了基于注意力的长期短期记忆解码器网络在离线手写识别中的应用,并分析了该模型产生的分割,分类和解码错误。我们进一步通过双向拓扑结构以及集成的长度估计程序扩展了解码网络,并表明它优于单向解码器网络。呈现了RIMES手写识别数据库的单词和文本行识别任务的结果。实验中使用的软件可免费用于学术研究。

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