A fast HMM algorithm for on-line handwritten character recognition

K. Takahashi, H. Yasuda, T. Matsumoto
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引用次数: 44

Abstract

A fast HMM algorithm is proposed for on-line hand written character recognition. After preprocessing input strokes are discretized so that a discrete HMM can be used. This particular discretization naturally leads to a simple procedure for assigning initial state and state transition probabilities. In the training phase, complete marginalization with respect to state is not performed (constrained Viterbi). A simple smoothing/flooring procedure yields fast and robust learning. A criterion based on the normalized maximum likelihood ratio is given for deciding when to create a new model for the same character in the learning phase, in order to cope with stroke order variations and large shape variations. Preliminary experiments are done on the new Kuchibue database from the Tokyo University of Agriculture and Technology. The results seem to be encouraging.
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一种用于在线手写字符识别的快速HMM算法
提出了一种用于在线手写字符识别的快速HMM算法。预处理后的输入冲程被离散化,这样就可以使用离散HMM。这种特殊的离散化自然导致分配初始状态和状态转移概率的简单过程。在训练阶段,不执行关于状态的完全边缘化(约束Viterbi)。一个简单的平滑/地板过程产生快速和强大的学习。给出了一个基于归一化最大似然比的准则,用于决定在学习阶段何时为同一字符创建新模型,以应对笔画顺序变化和较大的形状变化。初步实验是在东京农业技术大学的新Kuchibue数据库上进行的。结果似乎令人鼓舞。
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