古文字图像分类模型训练

Yi Lin
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引用次数: 0

摘要

如今,各种神经网络模型不断更新,世界上大多数行业都需要深度学习算法来解决许多实际问题。本文提出了基于RESNET网络模型的古汉字图像识别任务,以期为学生学习古汉字提供帮助。在工作中,完成了五种古汉字的分类。RESNET网络模型的结果非常好,测试集的最终结果准确率达到90%。同时,训练后对模型的稳定性进行测试,包括对测试集的图像进行垂直和水平翻转,以及对测试集的图像添加噪声。最后,对RESNET网络模型进行了总结,并对其适用环境进行了描述。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ancient Character Image Classification Model Training
Nowadays, various neural network models are updated, and most industries around the world need deep learning algorithms to solve a lot of practical problems. In this paper, we propose the task of image recognition of ancient Chinese characters based on RESNET network model, in order to provide help for students to learn ancient Chinese characters. In the work, the classification of five ancient Chinese characters is completed. The results of RESNET network model are very good, and the accuracy of the final result of the test set is 90%. At the same time, the stability of the model was tested after training, including vertical and horizontal flipping of the image of the test set, and adding noise to the image of the test set. Finally, the RESNET network model is summarized and its applicable environment is described.
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