在线无约束手写字符识别的ANN/HMM系统的数据驱动设计

Haifeng Li, T. Artières, P. Gallinari
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引用次数: 2

摘要

研究了一种基于神经网络/HMM的混合手写识别系统的数据驱动设计方法。一方面,提出了一种数据驱动的手写原语设计神经模型。首先将人工神经网络用作HMM原始分频器中的状态模型,该分频器通过最小化累积预测误差将每个信号帧与人工神经网络相关联。然后,通过在各自的帧集上训练每个网络来实现神经网络的建模。将这两个步骤组织在EM算法中,得到精确的原始模型。另一方面,针对HMM拓扑推理任务提出了一种数据驱动的系统方法。首先,利用禁忌搜索辅助聚类算法,将模式类的所有可能原型合并到若干类中。然后为模式类构造一个多并行路径HMM。实验证明,与直观设计的参考神经网络/HMM系统相比,该系统的识别率提高了8%,节省了50%的系统资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data driven design of an ANN/HMM system for on-line unconstrained handwritten character recognition
This paper is dedicated to a data driven design method for a hybrid ANN/HMM based handwriting recognition system. On one hand, a data driven designed neural modelling of handwriting primitives is proposed. ANNs are firstly used as state models in a HMM primitive divider that associates each signal frame with an ANN by minimizing the accumulated prediction error. Then, the neural modelling is realized by training each network on its own frame set. Organizing these two steps in an EM algorithm, precise primitive models are obtained. On the other hand, a data driven systematic method is proposed for the HMM topology inference task. All possible prototypes of a pattern class are firstly merged into several clusters by a tabu search aided clustering algorithm. Then a multiple parallel-path HMM is constructed for the pattern class. Experiments prove an 8% recognition improvement with a saving of 50% of system resources, compared to an intuitively designed referential ANN/HMM system.
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