基于DCGAN的街景门牌号数字识别

Juping Zhong, Jing Gao, Rongjun Chen, Jun Yu Li
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引用次数: 2

摘要

深度学习算法在人脸识别和物体分类等应用中已经超越了人类的分辨率。然而,它只能产生非常模糊,缺乏细节的图像。生成式对抗网络是生成器G与鉴别器D之间进行极大极小对抗的博弈训练,最终达到纳什均衡。我们使用深度卷积GAN来识别序列号和不分割字符。首先利用卷积网络提取字符特征。其次,构建卷积神经网络对自然场景房号进行数字识别。采用DCGAN提高模糊房屋数目的分辨率,从而在数据集训练中提取更丰富的数据特征。它可以更好地识别自然街道上的数字。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Digital recognition of street view house numbers based on DCGAN
Deep learning algorithms have surpassed human resolution in applications such as face recognition and object classification. However, it can only produce very blurred, lack of details of the image. Generative Adversarial Network is a game training of minimax antagonism between generator G and discriminator D, and ultimately achieves Nash equilibrium. We use deep convolutional GAN that recognizes sequence numbers and without split characters. First we use convolution network to extract character features. Second we construct a convolution neural network to recognize digits of natural scene house number. DCGAN is used to improve the resolution of the number of fuzzy houses, so as to extract more abundant data features in data set training. It can better recognize the numbers in the natural street.
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