Recognition of Handwritten Digits Based on Images Spectrum Decomposition

Zufar Kayumov, D. Tumakov, S. Mosin
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引用次数: 1

Abstract

Recognition of handwritten digits by convolutional neural network (CNN) using Fourier transforms of images as a preprocessing is considered. An algorithm of image preprocessing for effective CNN training and handwritten digits recognition is proposed. A discrete two-dimensional Fourier transform is applied to the original images. The real and imaginary parts are separated from the obtained complex values, as well as the amplitude and phase are calculated. Convolutional neural network is trained on the resulting characteristics obtained after Fourier transform. The proposed approach is tested on the MNIST database. The effects of image preprocessing using spectral decomposition and application of obtained different essential characteristics on the errors of handwritten digits recognition are estimated.
基于图像频谱分解的手写体数字识别
利用图像的傅里叶变换作为预处理,研究了卷积神经网络(CNN)对手写数字的识别。提出了一种用于CNN训练和手写体数字识别的图像预处理算法。对原始图像进行离散二维傅里叶变换。从得到的复数值中分离实部和虚部,并计算振幅和相位。卷积神经网络是根据傅里叶变换后得到的特征进行训练的。该方法在MNIST数据库上进行了测试。分析了利用光谱分解对图像进行预处理,并应用得到的不同基本特征对手写体数字识别误差的影响。
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