在线手写建模与识别的语法推理方法:初步研究

D. Yeung
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引用次数: 1

摘要

在本文中,我们提出了一种基于语法的时间序列建模和识别方法。与隐马尔可夫模型不同,隐马尔可夫模型需要人类提前确定合适的模型架构,我们的方法不依赖于关于底层语法拓扑的先验知识。特别地,提出了一个离散时间递归神经网络模型来单独学习每个嵌入的子语法(或子模式)类的动态。这些子语法网络模型使用称为自关联(或自监督)学习的无监督学习范式进行训练。在本初步研究中,研究了这种新的时间序列处理方法在在线手写建模和识别领域中的一些问题。并对今后可能的研究方向进行了讨论。
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A grammatical inference approach to on-line handwriting modeling and recognition: a pilot study
In this paper, we present a grammar-based approach to the modeling and recognition of temporal sequences. Unlike hidden Markov models which require humans to determine in advance the appropriate model architecture to work on, our approach does not rely on prior knowledge about the topology of the underlying grammars. In particular, a discrete-time recurrent neural network model is proposed to learn separately the dynamics of each embedded subgrammar (or subpattern) class. These subgrammar network models are trained using an unsupervised learning paradigm called auto-associative (or self-supervised) learning. In this pilot study, some issues of this new approach to temporal sequence processing are investigated in the domain of on-line handwriting modeling and recognition. Some possible future research directions are also discussed.
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