Oracle Bone Script Similiar Character Screening Approach Based on Simsiam Contrastive Learning and Supervised Learning
- URL: http://arxiv.org/abs/2408.06811v1
- Date: Tue, 13 Aug 2024 11:00:51 GMT
- Title: Oracle Bone Script Similiar Character Screening Approach Based on Simsiam Contrastive Learning and Supervised Learning
- Authors: Xinying Weng, Yifan Li, Shuaidong Hao, Jialiang Hou,
- Abstract summary: This project proposes a new method that uses fuzzy comprehensive evaluation method to integrate ResNet-50 self-supervised and RepVGG supervised learning.
The source image dataset HWOBC oracle is taken as input, the target image is selected, and the most similar image is output in turn without any manual intervention.
- Score: 2.151884597519634
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This project proposes a new method that uses fuzzy comprehensive evaluation method to integrate ResNet-50 self-supervised and RepVGG supervised learning. The source image dataset HWOBC oracle is taken as input, the target image is selected, and finally the most similar image is output in turn without any manual intervention. The same feature encoding method is not used for images of different modalities. Before the model training, the image data is preprocessed, and the image is enhanced by random rotation processing, self-square graph equalization theory algorithm, and gamma transform, which effectively enhances the key feature learning. Finally, the fuzzy comprehensive evaluation method is used to combine the results of supervised training and unsupervised training, which can better solve the "most similar" problem that is difficult to quantify. At present, there are many unknown oracle-bone inscriptions waiting for us to crack. Contacting with the glyphs can provide new ideas for cracking.
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