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Classification of Kannada Numerals Using Multi-layer Neural Network

机译:使用多层神经网络分类kannada数字

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A simple multilayer feed forward neural network based classification of handwritten as well as printed Kannada numerals is presented in this paper. A feed forward neural network is an artificial neural network where connections between the units do not form a directed cycle. Here four sets of Kannada numerals from 0 to 9 are used for training the network and one set is tested using the proposed algorithm. The input scanned document image containing Kannada numerals is binarized and a negative transformation is applied followed by noise elimination. Edge detection is carried out and then dilation is applied using 3 × 3 structuring element. The holes present in this image are filled. Every image is then segmented out forming 50 segmented images each containing one numeral, which is then resized. A multilayer feed forward neural network is created and this network is trained with 40 neural images. Then testing has been performed over ten numeral images. The proposed algorithm could perfectly able to classify and recognize the printed numerals with different fonts and hand written numerals.
机译:本文介绍了一种简单的多层馈线基于手写的神经网络以及印刷的Kannada数字。馈送前向神经网络是一个人工神经网络,其中单元之间的连接不形成定向周期。这里,从0到9的四组kannada数字用于训练网络,并且使用所提出的算法测试一个集合。包含kannada数字的输入扫描文档图像是二值化的,并且施加负变换,然后进行噪声消除。进行边缘检测,然后使用3×3结构元件施加扩张。填充此图像中存在的孔。然后,每个图像分段为形成50个分段图像,每个图像包含一个数字,然后调整大小。创建多层馈送前向神经网络,该网络培训具有40个神经图像。然后在十个数字图像上进行测试。所提出的算法可以完全能够用不同的字体和手写数字来分类和识别印刷的数字。

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