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Writer Code Based Adaptation of Deep Neural Network for Offline Handwritten Chinese Text Recognition

机译:基于作者代码的深度神经网络适应离线手写中文文本识别

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Recently, we propose deep neural network based hidden Markov models (DNN-HMMs) for offline handwritten Chinese text recognition. In this study, we design a novel writer code based adaptation on top of the DNN-HMM to further improve the accuracy via a customized recognizer. The writer adaptation is implemented by incorporating the new layers with the original input or hidden layers of the writer-independent DNN. These new layers are driven by the so-called writer code, which guides and adapts the DNN-based recognizer with the writer information. In the training stage, the writer-aware layers are jointly learned with the conventional DNN layers in an alternative manner. In the recognition stage, with the initial recognition results from the first-pass decoding with the writer-independent DNN, an unsupervised adaptation is performed to generate the writer code via the cross-entropy criterion for the subsequent second-pass decoding. The experiments on the most challenging task of ICDAR 2013 Chinese handwriting competition show that our proposed adaptation approach can achieve consistent and significant improvements of recognition accuracy over a highperformance writer-independent DNN-HMM based recognizer across all 60 writers, yielding a relative character error rate reduction of 23.62% in average.
机译:最近,我们提出了基于深度神经网络的隐马尔可夫模型(DNN-HMMS),用于离线手写中文文本识别。在本研究中,我们在DNN-HMM的顶部设计了一种基于创作者代码的适应性,以通过定制识别器进一步提高精度。作者适应是通过将新层与作家独立的DNN的原始输入或隐藏层结合起来来实现。这些新图层由所谓的Writer代码驱动,该代码引导并使用作者信息引导基于DNN的识别器。在训练阶段,写入者感知层以替代方式与传统的DNN层共同学习。在识别阶段,利用来自与作者无关的DNN的第一通过解码产生的初始识别结果,执行无监督的适应以通过随后的第二通过解码的跨熵标准生成写入器代码。对ICDAR 2013中国手写竞争最具挑战性任务的实验表明,我们所提出的适应方法可以通过所有60名作家的高度写道作家独立的DNN-HMM识别器实现一致而显着的识别准确性,产生相对字符的错误率平均减少23.62%。

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