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Multi-type Digital Recognition Based on TensorFlow

机译:基于Tensorflow的多型数字识别

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For the problem of inaccurate identification of numbers, this paper is based on LeNet-5 network structure and optimizes it. The objective function and optimizer are added after the network output, and the sample library is updated to make it more accurate to identify multiple types of numbers. The optimized architecture is applied to identify multiple types of numbers, trained and tested, and the optimization parameters are selected by comparison. The experimental results show that the optimization parameters of certain values have a higher recognition rate for identifying numbers. The study has reference value for multi-type digital recognition.
机译:对于数量不准确的问题,本文基于LENET-5网络结构并优化它。在网络输出之后添加目标函数和优化器,并更新样本库以使其更准确地识别多种类型的数字。应用优化的架构以识别多种类型的数字,培训和测试,并通过比较选择优化参数。实验结果表明,某些值的优化参数具有更高的识别率来识别数字。该研究具有多型数字识别的参考价值。

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