基于卷积神经网络的民族文化符号识别

Huang Zhixiong, Shi Zhuo, Kong Qian, Li Rongbin, Yang Ming, Zhang Mengxue, Yu Ke
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引用次数: 0

摘要

为了解决手工识别国家符号过程极其繁琐、识别效果不理想的问题,本文利用TensorFlow框架构建卷积神经网络,简单高效地识别国内符号。本文对分类后的壮族符号图片进行标注和归一化处理,形成一个数据集,然后在训练过程中,不断地将预测结果与正确答案之间的损失值进行约简,训练出一个卷积层、池的可视化层、全连通层、SoftMax层的卷积神经网络。最后,利用SoftMax层对图像进行分类。实验结果表明,经过大量的训练,该模型具有更强的鲁棒性,对15种符号类型的识别率可以达到89%,比人工识别过程更快、更准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
National Cultural Symbols Recognition Based on Convolutional Neural Network
In order to solve the problem that the process of manually identifying national symbols is extremely tedious and the recognition effect is not satisfactory, the paper uses the TensorFlow framework to build a convolutional neural network to identify domestic symbols simply and efficiently. In this paper, the classified Zhuang ethnic symbol pictures are labeled and normalized to make a data set, and then during the training process, the loss value between the prediction result and the correct answer is continuously reduced to train a convolution layer, pool The convolutional neural network of the visualization layer, the fully connected layer, and the SoftMax layer. Finally, the images are classified by the SoftMax layer. The experimental results show that after a lot of training, the model has been more robust, and the recognition rate of 15 symbol types can reach 89%, which is faster and more accurate than the manual recognition process.
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