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Gujarati character recognition using adaptive neuro fuzzy classifier with fuzzy hedges

机译:基于模糊树篱的自适应神经模糊分类器的古吉拉特语字符识别

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Recognition of Indian scripts is a challenging problem and work towards development of an OCR for handwritten Gujarati, an Indian script is still in infancy. This paper implements an Adaptive Neuro Fuzzy Classifier (ANFC) for Gujarati character recognition using fuzzy hedges (FHs). FHs are trained with other network parameters by scaled conjugate gradient training algorithm. The tuned fuzzy hedge values of fuzzy sets improve the flexibility of fuzzy sets; this property of FH improves the distinguishability rates of overlapped classes. This work is further extended for feature selection based on FHs. The values of fuzzy hedges can be used to show the importance of degree of fuzzy sets. According to the FH value, the redundant, noisily features can be eliminated, and significant features can be selected. An FH-based feature selection algorithm is implemented using ANFC. This paper aims to demonstrate recognition of ANFC-FH and improved results of the same with feature selection.
机译:识别印度文字是一个具有挑战性的问题,并致力于开发古吉拉特语手写OCR,印度文字仍处于婴儿期。本文使用模糊树篱(FH)实现了古吉拉特语字符识别的自适应神经模糊分类器(ANFC)。通过缩放共轭梯度训练算法,用其他网络参数训练跳频。调整后的模糊集的模糊对冲值提高了模糊集的灵活性。 FH的这一特性提高了重叠类的可分辨率。这项工作进一步扩展了基于FH的功能选择。模糊对冲的值可用于显示模糊集程度的重要性。根据FH值,可以消除多余的嘈杂特征,并可以选择重要特征。使用ANFC实现基于FH的特征选择算法。本文旨在证明对ANFC-FH的识别以及通过功能选择改进其结果。

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