基于MATLAB神经网络的新型字母表演绎及其与模糊分类器的比较

Bapatu Siva Kumar Reddy, P. Vardhan
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引用次数: 0

摘要

目的:利用神经网络和模糊分类器/逻辑对字母进行识别。方法与材料:采用神经网络和模糊分类器对汉字进行比较识别。每个分类器的样本量为20。字符识别使用MATLAB R2018a软件工具进行开发。再次将该算法与模糊分类器进行比较,了解准确率水平。结果:模糊分类器和神经网络的性能均以准确率值计算。模糊分类器的均值为82,神经网络的均值为77。数据特征的识别率(准确率)为98.06%。模糊分类器在字符识别上的显著性值P=0.002 < P=0.005高于神经网络。结论:本研究的独立测试表明,模糊分类器的字母字符识别准确率高于神经网络。因此,模糊分类器在字符识别方面比神经网络具有更高的显著性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novel Alphabet Deduction Using MATLAB by Neural Networks and Comparison with the Fuzzy Classifier
Aim: The study aims to identify or recognize the alphabets using neural networks and fuzzy classifier/logic. Methods and materials: Neural network and fuzzy classifier are used for comparing the recognition of characters. For each classifier sample size is 20. Character recognition was developed using MATLAB R2018a, a software tool. The algorithm is again compared with the Fuzzy classifier to know the accuracy level. Results: Performance of both fuzzy classifier and neural networks are calculated by the accuracy value. The mean value of the fuzzy classifier is 82 and the neural network is 77. The recognition rate (accuracy) with the data features is found to be 98.06%. Fuzzy classifier shows higher significant value of P=0.002 < P=0.005 than the neural networks in recognition of characters. Conclusion: The independent tests for this study shows a higher accuracy level of alphabetical character recognition for Fuzzy classifier when compared with neural networks. Henceforth, the fuzzy classifier shows higher significant than the neural networks in recognition of characters.
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来源期刊
Alinteri Journal of Agriculture Sciences
Alinteri Journal of Agriculture Sciences AGRICULTURE, MULTIDISCIPLINARY-
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