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A System for Offline Character Recognition Using Auto-encoder Networks

机译:使用自动编码器网络的脱机字符识别系统

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We present a technique of using Deep Neural Networks (DNNs) for offline character recognition of Telugu characters. We construct DNNs by stacking Auto-encoders that are trained in a greedy layer-wise fashion in an un-supervised manner. We then perform supervised fine-tuning to train the entire network. We provide results on Consonant and Vowel Modifier Datasets using two and three hidden layer DNNs. We also construct an ensemble classifier to increase the classification performance further. We observe 94.25% accuracy for the two hidden layer network on Consonant data and 94.1% on Vowel Modifier Dataset which increases to 95.4% for Consonant and 94.8% for Vowel Modifier Dataset after combining classifiers to form an ensemble classifier of 4 different two hidden layer networks.
机译:我们提出了一种使用深度神经网络(DNN)对泰卢固语字符进行脱机字符识别的技术。我们通过堆叠自动编码器构建DNN,这些自动编码器以无监督的方式以贪婪的逐层方式进行训练。然后,我们执行有监督的微调,以训练整个网络。我们使用两个和三个隐藏层DNN提供有关辅音和元音修饰符数据集的结果。我们还构造了整体分类器以进一步提高分类性能。我们观察到辅音数据上两个隐藏层网络的准确度为94.25%,元音修饰符数据集的准确度为94.1%,在组合分类器以形成4个不同的两个隐藏层网络的整体分类器后,辅音的准确度为95.4%,元音修饰符的数据集为94.8%。 。

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