基于BLSTM的无约束手写词识别

Xi Zhang, C. Tan
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引用次数: 3

摘要

为了获得较高的识别精度,我们需要用足够的训练数据来训练识别器,以捕获各种手写风格的特征和所有可能出现的单词。然而,在大多数情况下,可用的训练数据是不够的,特别是对于看不见的数据。在本文中,我们尝试用随机选择的训练数据来提高对未见数据的识别精度,方法是基于三角图将训练数据分成两部分,分别训练两个识别器。我们还提出了一种改进版本的令牌传递算法,该算法利用两个识别器的输出来提高识别精度。
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Unconstrained Handwritten Word Recognition Based on Trigrams Using BLSTM
To get high recognition accuracy, we should train the recognizer with sufficient training data to capture characteristics of various handwriting styles and all possible occurring words. However, in most of the cases, available training data are not satisfactory and enough, especially for unseen data. In this paper, we try to improve the recognition accuracy for unseen data with randomly selected training data, by splitting the training data into two parts based on trigrams and training two recognizers separately. We also propose a modified version of token passing algorithm, which makes use of the outputs of the two recognizers to improve the recognition accuracy.
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