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AN EVOLUTIONARY APPROACH TO THE USE OF NEURAL NETWORKS IN THE SEGMENTATION OF HANDWRITTEN NUMERALS

机译:在手写数字分割中使用神经网络的进化方法

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摘要

Neural networks are now widely and successfully used in the recognition of handwritten numerals. Despite their wide use in recognition, neural networks have not seen widespread use in segmentation. Segmentation can be extremely difficult in the presence of connected numerals, fragmented numerals, and background noise, and its failure is a principal cause of rejected and incorrectly read documents. Therefore, strategies leading to the successful application of neural technologies to segmentation are likely to yield important performance benefits. In this paper we identify problems that have impeded the use of neural networks in segmentation and describe an evolutionary approach to applying neural networks in segmentation. Our approach, based upon the use of mono-tonic fuzzy valued decision functions computed by feed-forward neural networks, has been successfully employed in a production system.
机译:神经网络现在已广泛且成功地用于手写数字的识别。尽管神经网络在识别中得到了广泛的应用,但在分割中尚未见到广泛的应用。在存在连接的数字,分段的数字和背景噪音的情况下,分段可能会非常困难,其失败是导致文档被拒绝和错误阅读的主要原因。因此,将神经技术成功应用于分割的策略可能会产生重要的性能优势。在本文中,我们确定了阻碍在分割中使用神经网络的问题,并描述了在分割中应用神经网络的进化方法。基于前馈神经网络计算出的单调模糊值决策函数,我们的方法已成功应用于生产系统中。

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