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Recognition of handwritten characters using modified fuzzy hyperline segment neural network

机译:基于改进的模糊超线段神经网络的手写字符识别

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In this paper membership function of fuzzy hyperline segment neural network (FHLSNN) proposed by U.V. Kulkarni and T.R. Sontakke is modified to maintain convexity. The modified membership function is found superior than the function defined by them, which gives relatively lower values to the patterns which are falling close to the hyperline segment (HLS) but far from two end points of HLS. The performance of modified fuzzy hyperline segment neural network (MFHLSNN) is tested with the two splits of FISHER IRIS data and is found superior than FHLSNN. The modified neural network is also found superior than the general fuzzy min-max neural network (GFMM), proposed by Bogdan Gabrys and Andrzej Bargiela, and general fuzzy hypersphere neural network (GFHSNN), proposed by U.V. Kulkarni, D.D. Doye and T.R. Sontakke.
机译:本文提出了U.V.提出的模糊超线段神经网络(FHLSNN)的隶属函数。库尔卡尼和T.R.对Sontakke进行了修改以保持凸度。发现修改后的隶属度函数优于由它们定义的函数,后者为落入超线段(HLS)但远离HLS两个端点的模式提供了相对较低的值。使用FISHER IRIS数据的两个分割对改进的模糊超线分段神经网络(MFHLSNN)的性能进行了测试,发现其性能优于FHLSNN。还发现改进的神经网络优于Bogdan Gabrys和Andrzej Bargiela提出的通用模糊最小-最大神经网络(GFMM)和U.V.提出的通用模糊超球面神经网络(GFHSNN)。库尔卡尼(D.D.) Doye和T.R. Sontakke。

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