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Combination of context-dependent bidirectional long short-term memory classifiers for robust offline handwriting recognition

机译:上下文相关的双向长短期记忆分类器的组合,可实现可靠的离线手写识别

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摘要

The BLSTM classifier has been recently introduced for sequence labeling tasks and provides state-of-the-art performance for handwriting recognition. Its recurrent connections integrate the context at the feature level over a long range. Nevertheless, this context is not explicitly modeled at the label level. Explicit context-modeling strategies have been applied to HMMs with improvement of the recognition rate. In this paper, we study the effect of context modeling on the performance of the BLSTM classifier. The baseline approach, consisting of context-independent character label, is compared with several context dependent approaches, modeling the left and right contexts. The results show that context-dependent models improve the recognition rate, and demonstrate the ability of the BLSTM classifier to deal with a large number of character models, without clustering. Furthermore, the context-dependent and context independent models are complementary, and their combination leads to a robust recognition. We tested our approach with promising results on the RIMES database of Latin script documents. (c) 2017 Elsevier B.V. All rights reserved.
机译:BLSTM分类器最近被引入用于序列标记任务,并提供用于手写识别的最新性能。它的循环连接在很长的范围内在功能级别集成了上下文。但是,此上下文未在标签级别上明确建模。随着识别率的提高,显式上下文建模策略已应用于HMM。在本文中,我们研究了上下文建模对BLSTM分类器性能的影响。将基线方法(包括与上下文无关的字符标签组成)与几种与上下文相关的方法进行比较,对左侧和右侧的上下文进行建模。结果表明,上下文相关模型提高了识别率,并证明了BLSTM分类器处理大量字符模型而无需聚类的能力。此外,上下文相关和上下文无关的模型是互补的,并且它们的组合导致可靠的识别。我们在拉丁文字文档的RIMES数据库上测试了我们的方法,并获得了有希望的结果。 (c)2017 Elsevier B.V.保留所有权利。

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