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A Tibetan Component Representation Learning Method for Online Handwritten Tibetan Character Recognition

机译:在线手写藏文字符识别的藏文成分表示学习方法

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This paper presents a Tibetan component representation learning method for component-based online handwritten Tibetan character recognition. In conventional methods, we designed features manually for Tibetan components. The hand-crafted features are often incomplete and decrease the component recognition accuracy, which influences component-based character recognition performance. To overcome the deficiency, we use three layer deep belief networks to learn automatically representation features for components. Restricted Boltzmann machine is used to construct each hidden layer. The weight parameters of the networks are optimized by greedy layer-wise learning algorithm. Then we combine representation learning based component classifier into our previous integrated segmentation and recognition framework. Finally we add syllable association module to improve the handwriting input speed. Experimental results on MRG-OHTC database show that the component representation learning method gives the promising performance. The proposed method achieves the component-level and character-level recognition rates of 94.78% and 94.09%.
机译:本文提出了一种用于基于组件的在线手写藏文字符识别的藏文组件表示学习方法。在传统方法中,我们为藏族部件手动设计特征。手工制作的功能通常不完整,会降低组件识别的准确性,从而影响基于组件的字符识别性能。为了克服该缺陷,我们使用三层深度置信网络来自动学习组件的表示特征。受限的Boltzmann机器用于构造每个隐藏层。网络的权重参数通过贪婪分层学习算法进行优化。然后,我们将基于表示学习的组件分类器组合到我们先前的集成细分和识别框架中。最后,我们添加了音节关联模块,以提高手写输入速度。在MRG-OHTC数据库上的实验结果表明,组件表示学习方法具有良好的性能。所提出的方法实现了组件级和字符级的识别率分别为94.78%和94.09%。

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