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On-line Overlaid-Handwriting Recognition Based on Substroke HMMs.

机译:基于Substroke HMMs的在线叠加手写识别。

摘要

This study discusses the subject of training data selection for neural networks using back propagation. We have made only one assumption that there are no overlapping of training data belonging to different classes, in other words the training data is linearly/semi-linearly separable . Training data is analyzed and the data that affect the learning process are selected based on the idea of Critical points. The proposed method is applied to a classification problem where the task is to recognize the characters A,C and B,D. The experimental results show that in case of batch mode the proposed method takes almost 1/7 of real and 1/10 of user training time required for conventional method. On the other hand in case of online mode the proposed method takes 1/3 of training epochs, 1/9 of real and 1/20 of user and 1/3 system time required for the conventional method. The classification rate of training and testing data are the same as it is with the conventional method.
机译:这项研究讨论了使用反向传播的神经网络训练数据选择的主题。我们仅作了一个假设,即不存在属于不同类别的训练数据的重叠,换句话说,训练数据是线性/半线性可分离的。分析培训数据,并根据关键点的思想选择影响学习过程的数据。所提出的方法适用于分类问题,其中的任务是识别字符A,C和B,D。实验结果表明,在批处理模式下,该方法几乎消耗了常规方法的1/7的实际时间和1/10的用户训练时间。另一方面,在在线模式的情况下,所提出的方法需要训练时间的1/3,实际的1/9和用户的1/20,以及传统方法所需的1/3系统时间。训练和测试数据的分类率与常规方法相同。

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