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Handwritten character recognition by Fourier descriptors and neural network

机译:傅立叶描述符和神经网络的手写字符识别

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摘要

This paper describes a handwritten character recognition system by using a multi-layer perceptron with one hidden layer. Features extracted from the handwritten characters are Fourier descriptor (FD) and border transition technique (BTT). The FDs and border transition values are input to the neural network which is then trained by backpropagation. Test results indicate that FD combined with BTT can provide good recognition accuracy (96%) for handwritten numerals 0 to 9.
机译:本文通过使用具有一个隐藏层的多层的Perceptron描述了手写字符识别系统。从手写字符中提取的功能是傅立叶描述符(FD)和边界过渡技术(BTT)。 FDS和边界过渡值输入到神经网络,然后通过BackPropagation培训。测试结果表明,与BTT结合的FD可以为手写数字0至9提供良好的识别精度(96%)。

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