在线手写识别中笔画及其关系的贝叶斯网络建模

Sung-Jung Cho, J. H. Kim
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引用次数: 63

摘要

对笔画及其关系进行建模对于在线手写识别非常重要,因为它们反映了字符结构。我们建议用贝叶斯网络对它们进行明确和统计的建模。一个人物是用笔画模型和它们的关系来建模的。笔画,笔迹痕迹中近似线性的部分,用一组点模型和它们之间的关系来建模。根据相关点的信息,用条件概率表和笔的状态以及在二维空间中的X、Y位置的分布对点进行建模。采用贝叶斯网络表示人物模型,其中节点对应点模型,弧线对应点模型的依赖关系。对该系统进行了在线手写体数字识别实验。它比基于HMM的链码特征识别器显示出更高的识别率,并且与其他已发表的系统相当。
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Bayesian network modeling of strokes and their relationships for on-line handwriting recognition
It is important to model strokes and their relationships for on-line handwriting recognition, because they reflect character structures. We propose to model them explicitly and statistically with Bayesian networks. A character is modeled with stroke models and their relationships. Strokes, parts of handwriting traces that are approximately linear, are modeled with a set of point models and their relationships. Points are modeled with conditional probability tables and distributions for pen status and X, Y positions in the 2-D space, given the information of related points. A Bayesian network is adopted to represent a character model, whose nodes correspond to point models and arcs their dependencies. The proposed system was tested on the recognition of on-line handwritten digits. It showed higher recognition rates than the HMM based recognizer with chaincode features and was comparable to other published systems.
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