基于人工神经网络算法的非线性畸变图像识别研究

Wensheng Yan, Mohammad Shabaz, Manik Rakhra
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引用次数: 4

摘要

研究非线性失真图像识别技术。通过对神经网络的研究,提出了一种基于BP神经网络的图像识别模型:一种改进的驱动量因子算法。根据建立的神经网络模型,对10个常用的阿拉伯数字字符图像进行了识别。利用提取的目标图像特征参数进行实验,验证了该模型的有效性。结果表明,单阶段识别网络能正确识别40幅带噪声的畸变图像中的38幅,错误识别2幅,识别率达到95%;级联网络的识别率达到100%。因此,驱动数字项的BP网络可以加快网络的训练时间,提高系统的识别效率。
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Research on Nonlinear Distorted Image Recognition Based on Artificial Neural Network Algorithm
To study nonlinear distortion image recognition technology. Through the study of neural networks, an image recognition model based on BP neural network is proposed: An improved algorithm for driving quantity factor. According to the established neural network model, 10 commonly used images of Arabic numeral characters are recognized. The effectiveness of the model is verified by experiments with the extracted feature parameters of the target image. The results show that 38 of the 40 distorted images with noise can be correctly identified and 2 of them can be incorrectly identified by the single-stage recognition network, and the recognition rate reaches 95%; the recognition rate of cascade network reaches 100%. Therefore, the BP network which drives the number term can accelerate the training time of the network and improve the recognition efficiency of the system.
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