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DBN-based structural learning and optimisation for automated handwritten character recognition

机译:用于自动手写字符识别的基于DBN的结构学习和优化

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摘要

Pattern recognition using Dynamic Bayesian Networks (DBNs) is currently a growing area of study. The classification performance greatly relies on the choice of a DBN model that will best describe the dependencies in each class of data. In this paper, we present DBN models trained for the classification of handwritten digit. Two approaches to improve the suitability of the models are presented. One uses a fixed DBN structure, and is based on an Evolutionary Algorithm optimisation of the selection and of the layout of the observations for each class of data. The second approach is about learning part of the structure of the models from the training set of each class. Parameter learning is then performed for each DBN. Classification results are presented for the described models, and compared with previously published results. Both approaches were found to improve the recognition rate compared to previous results.
机译:使用动态贝叶斯网络(DBN)的模式识别目前是一个正在研究的领域。分类性能在很大程度上取决于对DBN模型的选择,该模型将最好地描述每个数据类别中的依赖性。在本文中,我们提出了针对手写数字分类训练的DBN模型。提出了两种提高模型适用性的方法。一种使用固定的DBN结构,并且基于对每种数据类别的观测的选择和布局进行优化的进化算法。第二种方法是从每个班级的训练集中学习模型结构的一部分。然后对每个DBN执行参数学习。给出了所描述模型的分类结果,并与先前发布的结果进行了比较。与以前的结果相比,发现这两种方法都可以提高识别率。

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