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Towards Written Text Recognition Based on Handwriting Experiences Using a Recurrent Neural Network

机译:基于递归神经网络的基于手写体验的书面文字识别

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In this paper, we propose a model for recognizing written text through prediction of a handwriting sequence. The approach is based on findings in the brain sciences field. When recognizing written text, humans are said to unintentionally trace its handwriting sequence in their brains. Likewise, we aim to create a model that predicts a handwriting sequence from a static image of written text. The predicted handwriting sequence would be used to recognize the text. As the first step towards the goal, we created a model using neural networks, and evaluated the learning and recognition capability of the model using single Japanese characters. First, the handwriting image sequences for training are self-organized into image features using a self-organizing map. The self-organized image features are used to train the neuro-dynamics learning model. For recognition, we used both trained and untrained image sequences to evaluate the capability of the model to adapt to unknown data. The results of two experiments using 10 Japanese characters show the effectivity of the model.
机译:在本文中,我们提出了一种通过预测笔迹序列来识别文字的模型。该方法基于脑科学领域的发现。据说人们在识别书面文字时会在大脑中无意中追踪其手写顺序。同样,我们的目标是创建一个模型,该模型可根据文字的静态图像预测笔迹顺序。预测的手写顺序将用于识别文本。作为实现该目标的第一步,我们使用神经网络创建了一个模型,并使用单个日语字符评估了该模型的学习和识别能力。首先,使用自组织图将用于训练的手写图像序列自组织为图像特征。自组织图像特征用于训练神经动力学学习模型。为了进行识别,我们同时使用了经过训练的图像序列和未经训练的图像序列来评估模型适应未知数据的能力。两次使用10个日语字符的实验结果表明了该模型的有效性。

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