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ADAPTIVE, OPTICAL, RADIAL BASIS FUNCTION NEURAL NETWORK FOR HANDWRITTEN DIGIT RECOGNITION

机译:手写数字识别的自适应,光学,径向基函数神经网络

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摘要

An adaptive, optical, radial basis function classifier for handwritten digit recognition is experimentally demonstrated. We describe a spatially muitiplexed system that incorporates an on-line adaptation of weights and basis function widths to provide robustness to optical system imperfections and system noise. The optical system computes the Euclidean distances between a 100-dimensional input vector and 198 stored reference patterns in parallel by using dual vector-matrix multipliers and a contrast-reversing spatial light modulator. Software is used to emulate an electronic chip that performs the on-line learning of the weights and basis function widths. An experimental recognition rate of 92.7% correct out of 300 testing sampled is achieved with the adaptive training, versus 31.0% correct for nonadaptive training. We compare the experimental results with a detailed computer model of the system in order to analyze the influence of various noise sources on the system performance. (C) 1995 Optical Society of America [References: 18]
机译:实验证明了一种用于手写数字识别的自适应光学径向基函数分类器。我们描述了一种空间多重复合系统,该系统结合了权重和基本函数宽度的在线适应功能,可为光学系统缺陷和系统噪声提供鲁棒性。光学系统通过使用双矢量矩阵乘法器和反差空间光调制器,并行计算100维输入矢量和198个存储的参考图案之间的欧几里得距离。软件用于仿真电子芯片,该电子芯片可进行权重和基函数宽度的在线学习。通过自适应训练,在300个采样样本中,正确率达到92.7%的实验识别率,而对于非自适应训练则为31.0%。我们将实验结果与系统的详细计算机模型进行比较,以分析各种噪声源对系统性能的影响。 (C)1995年美国眼镜学会[参考文献:18]

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