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Noise immunization of a neural fuzzy intelligent recognition system by the use of feature and rule extraction technique

机译:通过使用特征和规则提取技术的神经模糊智能识别系统的噪声免疫

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The performance of a neural fuzzy intelligent recognition system (NFIRS) which recognizes varied levels of noise corrupted characters was investigated. The number of regions in the universe of discourse of the input space was first arbitrarily selected. Then, the centers of these regions were self organized by feeding the system with a 256-pixel alphabet and algebraic training samples to the Kohonen competitive learning network. Based on the reallocated centers, we tried several combinations of varied rule region product in order to generate a smaller set of fuzzy rules. We fixed the number of features for simulation, and to simplify and isolate the effect of rule extraction. Simulation results showed a NFIRS that uses a set of thirty six sampling data set as the training input will generate a set of thirty six if-then fuzzy rules which can be used to recognize a corrupted testing data set without sacrificing the rate of recognition under varied conditions.
机译:识别出识别各种噪声损坏字符水平的神经模糊智能识别系统(NFIR)的性能。首先任意选择输入空间话语宇宙中的区域数。然后,通过将系统喂食256像素的字母和代数训练样本来组织这些地区的中心,以至于在Kohonen竞争学习网络中喂养系统。基于重新分配的中心,我们尝试了多种规则区域产品的多种组合,以产生较小的模糊规则。我们修复了模拟的功能数量,并简化和隔离规则提取的效果。仿真结果表明,使用一组三十六个采样数据集的NFIR,因为训练输入将生成一组三十六个if-wey模糊规则,该规则可以用于识别损坏的测试数据集,而不会牺牲变化下的识别率状况。

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