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Fuzzy Recognition Based on the Total Matching Degree of Multi-features

机译:模糊识别基于多功能总匹配程度的模糊识别

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This paper presented a novel modular recognition method, which was the Fuzzy Neural Network Inference Recognition (FNNIR) method based on the total matching degree computing of multi-features. The Modular Recognition Functional Component (MRFC) was composed of three software modules, which were feature extraction module, off-line learning module and on-line fuzzy inference module. A zero-order Takagi-Sugeno Fuzzy Neural Network was constructed to obtain non-linear mapping between multi-features and actual classification. The bell-shaped membership function was proposed to describe the distribution of feature values. The parameters of the membership function for each feature can be determined by off-line learning of FNN. The matching degree of each feature and the total matching degree can be calculated by the membership functions, and the recognition result can be determined by the total matching degree. The experiment results show that the average test error of FNN is only 0.005443, with high modeling accuracy, thus making it suitable for on-line applications with high recognition accuracy.
机译:本文提出了一种新型模块识别方法,是基于多特征总匹配程度计算的模糊神经网络推理识别(FNNIR)方法。模块化识别功能组件(MRFC)由三个软件模块组成,该软件模块是特征提取模块,离线学习模块和在线模糊推理模块。构建零阶Takagi-Sugeno模糊神经网络,以获得多特征和实际分类之间的非线性映射。提出了钟形隶属函数来描述特征值的分布。每个特征的成员函数的参数可以通过FNN的离线学习来确定。可以通过隶属函数计算每个特征和总匹配度的匹配程度,并且可以通过总匹配程度确定识别结果。实验结果表明,FNN的平均测试误差仅为0.005443,具有高建模精度,从而使其适用于具有高识别精度的在线应用。

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