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Offline continuous handwriting recognition using sequence to sequence neural networks

机译:使用序列对神经网络进行脱机连续手写识别

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This paper proposes the use of a new neural network architecture that combines a deep convolutional neural network with an encoder-decoder, called sequence to sequence, to solve the problem of recognizing isolated handwritten words. The proposed architecture aims to identify the characters and contextualize them with their neighbors to recognize any given word. Our model proposes a novel way to extract relevant visual features from a word image. It combines the use of a horizontal sliding window, to extract image patches, and the application of the LeNet-5 convolutional architecture to identify the characters. Extracted features are modeled using a sequence-to-sequence architecture to encode the visual characteristics and then to decode the sequence of characters in the handwritten text image. We test the proposed model on two handwritten databases (IAM and RIMES) under several experiments to determine the optimal parameterization of the model. Competitive results above those presented in the current state-of-the-art, on handwriting models, are achieved. Without using any language model and with closed dictionary, we obtain a word error rate in the test set of 12.7% in IAM and 6.6% in RIMES. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文提出了一种新的神经网络架构的使用,该架构将深度卷积神经网络与编码器/解码器(称为序列到序列)相结合,以解决识别孤立手写单词的问题。拟议的体系结构旨在识别字符并将其与邻居环境关联,以识别任何给定的单词。我们的模型提出了一种从单词图像中提取相关视觉特征的新颖方法。它结合了水平滑动窗口的使用,提取图像补丁以及LeNet-5卷积体系结构的应用来识别字符。使用序列到序列的体系结构对提取的特征进行建模,以对视觉特征进行编码,然后对手写文本图像中的字符序列进行解码。我们在几个实验下在两个手写数据库(IAM和RIMES)上测试了提出的模型,以确定模型的最佳参数。获得了优于当前最新技术(在手写模型上)的竞争结果。在不使用任何语言模型且没有封闭词典的情况下,我们在测试集中获得的单词错误率在IAM中为12.7%,在RIMES中为6.6%。 (C)2018 Elsevier B.V.保留所有权利。

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