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首页> 外文期刊>International Journal of Image and Graphics >Handwritten Farsi Word Recognition Using NN-Based Fusion of HMM Classifiers with Different Types of Features
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Handwritten Farsi Word Recognition Using NN-Based Fusion of HMM Classifiers with Different Types of Features

机译:手写的Farsi Word识别使用基于NN的HMM分类器融合,具有不同类型的功能

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摘要

In this paper, an off-line method, based on hidden Markov model, HMM, is used for holistic recognition of handwritten words of a limited vocabulary. Three feature sets based on image gradient, black–white transition and contour chain code are used. For each feature set an HMM is trained for each word. In the recognition step, the outputs of these classifiers are combined through a multilayer perceptron, MLP. High number of connections in this network causes a computational complexity in the training. To avoid this problem, a new method is proposed. In the experiments on 16000 images of 200 names of Iranian cities, from “Iranshahr 3” dataset, the results of the proposed method are presented and compared with some similar methods. An error analysis on these results is also provided.
机译:本文基于隐马尔可夫模型HMM的离线方法用于有限词汇的手写单词的整体识别。 使用基于图像梯度,黑白转换和轮廓链代码的三个特征集。 对于每个功能设置,每个单词训练HMM。 在识别步骤中,这些分类器的输出通过多层Perceptron,MLP组合。 该网络中的大量连接导致培训中的计算复杂性。 为了避免这个问题,提出了一种新方法。 在伊朗城市的200个名称的16000张照片中,从“Iranshahr 3”数据集中,提出了该方法的结果,并与一些类似的方法进行了比较。 还提供了对这些结果的错误分析。

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