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首页> 外文期刊>IEEE Transactions on Neural Networks >User adaptive handwriting recognition by self-growing probabilistic decision-based neural networks
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User adaptive handwriting recognition by self-growing probabilistic decision-based neural networks

机译:通过自增长概率决策神经网络进行用户自适应手写识别

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摘要

Based on self-growing probabilistic decision-based neural networks (SPDNNs), user adaptation of the parameters of SPDNN is formulated as incremental reinforced and anti-reinforced learning procedures, which are easily integrated into the batched training procedures of the SPDNN. In this study, we developed: 1) an SPDNN based handwriting recognition system; 2) a two-stage recognition structure; and 3) a three-phase training methodology for a global coarse classifier (stage 1), a user independent hand written character recognizer (stage 2), and a user adaptation module on a personal computer. With training and testing on a 600-word commonly used Chinese character set, the recognition results indicate that the user adaptation module significantly improved the recognition accuracy. The average recognition rate increased from 44.2% to 82.4% in five adapting cycles, and the performance could finally increase up to 90.2% in ten adapting cycles.
机译:基于自增长的基于概率决策的神经网络(SPDNN),SPDNN参数的用户适应性被公式化为增量增强和反增强学习过程,可以轻松地将其集成到SPDNN的批量训练过程中。在这项研究中,我们开发了:1)基于SPDNN的手写识别系统; 2)两阶段识别结构; 3)针对全局粗分类器(阶段1),用户独立的手写字符识别器(阶段2)和个人计算机上的用户适应模块的三相训练方法。通过对600个常用汉字字符集的培训和测试,识别结果表明用户自适应模块大大提高了识别精度。在五个适应周期中,平均识别率从44.2%提高到82.4%,在十个适应周期中,性能最终可以提高到90.2%。

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