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首页> 外文期刊>International Journal on Document Analysis and Recognition >Writer adaptation via deeply learned features for online Chinese handwriting recognition
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Writer adaptation via deeply learned features for online Chinese handwriting recognition

机译:通过深度学习的功能进行作家改编,以实现在线中文手写识别

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摘要

This paper proposes a novel framework of writer adaptation based on deeply learned features for online handwritten Chinese character recognition. Our motivation is to further boost the state-of-the-art deep learning-based recognizer by using writer adaptation techniques. First, to perform an effective and flexible writer adaptation, we propose a tandem architecture design for the feature extraction and classification. Specifically, a deep neural network (DNN) or convolutional neural network (CNN) is adopted to extract the deeply learned features which are used to build a discriminatively trained prototype-based classifier initialized by Linde-Buzo-Gray clustering techniques. In this way, the feature extractor can fully utilize the useful information of a DNN or CNN. Meanwhile, the prototype-based classifier could be designed more compact and efficient as a practical solution. Second, the writer adaption is performed via a linear transformation of the deeply learned features which is optimized with a sample separation margin-based minimum classification error criterion. Furthermore, we improve the generalization capability of the previously proposed discriminative linear regression approach for writer adaptation by using the linear interpolation of two transformations and adaptation data perturbation. The experiments on the tasks of both the CASIA-OLHWDB benchmark and an in-house corpus with a vocabulary of 20,936 characters demonstrate the effectiveness of our proposed approach.
机译:本文提出了一种基于深度学习特征的作家改写新框架,用于在线手写汉字识别。我们的动机是通过使用作家适应技术来进一步增强基于深度学习的最新技术。首先,为了进行有效而灵活的作家改编,我们提出了一种用于特征提取和分类的串联架构设计。具体来说,采用深度神经网络(DNN)或卷积神经网络(CNN)提取深度学习的特征,这些特征用于构建由Linde-Buzo-Gray聚类技术初始化的,经过区分训练的基于原型的分类器。这样,特征提取器可以充分利用DNN或CNN的有用信息。同时,可以将基于原型的分类器设计为更紧凑,更有效的解决方案。其次,作者的适应是通过对深度学习的特征进行线性变换来实现的,该变换使用基于样本分离余量的最小分类误差准则进行了优化。此外,我们通过使用两次变换的线性插值和自适应数据扰动来提高先前提出的用于作者自适应的判别线性回归方法的泛化能力。对CASIA-OLHWDB基准和内部语料库(包含20,936个字符的词汇)的任务进行的实验证明了我们提出的方法的有效性。

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