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A Sundanese Characters Recognition Based on Backpropagation Neural Network Approach

机译:基于BackProjagation神经网络方法的阳光字符识别

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The Sundanese script is the original script of the archipelago inheritance which should be recognized and preserved. This study is to recognize the Sundanese script pattern with the Backpropagation Neural Network (BPNN) algorithm. This research starts from image acquisition, image preprocessing process which consists of normalization of size, thresholding, image sharpening, binarization and thinning, feature extraction, analysis by the BPNN method. This test obtained an accuracy rate in recognizing Sundanese script patterns of 95.23%. The most optimal variant of network architecture is the variation of learning rate of 0.02 and the number of hidden layers of 90 layers so that an MSE of 4.99×10-10 is obtained with a learning time of 2 minutes 45 seconds. So, the BPNN method can be recommended to recognize Sundanese script patterns.
机译:Sundanese脚本是Archipelago继承的原始脚本,应该被识别和保留。本研究是用反向化神经网络(BPNN)算法识别阳光脚本模式。该研究从图像采集开始,图像预处理过程中由尺寸,阈值,图像锐化,二值化和变薄,特征提取,通过BPNN方法进行分析。该测试获得了识别95.23%的阳光剧本模式的准确率。网络架构的最佳变体是学习速率的变化0.02和90层的隐藏层的数量,使得在40分45秒的学习时间获得4.99×10-10的MSE。因此,可以建议使用BPNN方法来识别Sundanese脚本模式。

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