Scribe Verification in Chinese manuscripts using Siamese, Triplet, and Vision Transformer Neural Networks
arXiv cs.LG / 3/17/2026
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Key Points
- The paper analyzes deep metric learning models, including Siamese, Triplet, and Vision Transformer architectures, for scribe verification in Chinese manuscripts.
- It uses two datasets—Tsinghua Bamboo Slips and a subset of the Multi-Attribute Chinese Calligraphy Dataset—focusing on calligraphers with many samples.
- The study implements both convolutional and Transformer-based backbones, including MobileNetV3+ Custom Siamese, for comparison.
- The MobileNetV3+ Custom Siamese model trained with contrastive loss achieves the best or second-best accuracy and AUC on both datasets.
- This work advances automatic authorship verification in historical manuscripts and demonstrates the effectiveness of deep metric learning for script analysis.
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