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Cortical-Inspired Open-Bigram Representation for Handwritten Word Recognition

机译:手写的单词识别的皮质启发开放式爆发

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Recent research in the cognitive process of reading hypothesized that we do not read words by sequentially recognizing letters, but rather by identifing open-bigrams, i.e. couple of letters that are not necessarily next to each other. In this paper, we evaluate an handwritten word recognition method based on original open-bigrams representation. We trained Long Short-Term Memory Recurrent Neural Networks (LSTM-RNNs) to predict open-bigrams rather than characters, and we show that such models are able to learn the long-range, complicated and intertwined dependencies in the input signal, necessary to the prediction. For decoding, we decomposed each word of a large vocabulary into the set of constituent bigrams, and apply a simple cosine similarity measure between this representation and the bagged RNN prediction to retrieve the vocabulary word. We compare this method to standard word recognition techniques based on sequential character recognition. Experiments are carried out on two public databases of handwritten words (Rimes and IAM). The bigram decoder results with our bigram decoder are comparable to more conventional decoding methods based on sequences of letters.
机译:读取假设的认知过程中最近的研究,以便通过顺序识别字母来读取单词,而是通过识别开放式大计,即不一定彼此相邻的字母。在本文中,我们评估了基于原始开放式展示的手写词识别方法。我们培训了长期短期内存经常性的神经网络(LSTM-RNNS)以预测开放的巨头,而不是字符,并且我们表明这种模型能够在输入信号中学习所需的输入信号中的远程,复杂和交错的依赖关系预测。为了解码,我们将大词汇量的每个单词分解为组成的Bigrams集合,并在该表示和袋装的RNN预测之间应用简单的余弦相似度测量来检索词汇字。我们将此方法与顺序字符识别进行了标准字识别技术。实验是在手写词(rime和IAM)的两个公共数据库上进行的。 BIGRAM解码器结果与我们的BIGRAM解码器相当于基于字母序列的更传统的解码方法。

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