CVJan 27, 2024

An open dataset for oracle bone script recognition and decipherment

arXiv:2401.15365v425 citationsh-index: 15Has CodeSci Data
Originality Synthesis-oriented
AI Analysis

This provides a high-quality dataset for scholars and AI researchers working on ancient Chinese script decipherment, though it is incremental as it addresses a data bottleneck rather than introducing new methods.

The paper tackles the challenge of deciphering ancient Oracle Bone Characters by creating the HUST-OBC dataset, which includes 140,053 images of 1,588 deciphered and 9,411 undeciphered characters to facilitate AI-assisted research.

Oracle bone script, one of the earliest known forms of ancient Chinese writing, presents invaluable research materials for scholars studying the humanities and geography of the Shang Dynasty, dating back 3,000 years. The immense historical and cultural significance of these writings cannot be overstated. However, the passage of time has obscured much of their meaning, presenting a significant challenge in deciphering these ancient texts. With the advent of Artificial Intelligence (AI), employing AI to assist in deciphering Oracle Bone Characters (OBCs) has become a feasible option. Yet, progress in this area has been hindered by a lack of high-quality datasets. To address this issue, this paper details the creation of the HUST-OBC dataset. This dataset encompasses 77,064 images of 1,588 individual deciphered characters and 62,989 images of 9,411 undeciphered characters, with a total of 140,053 images, compiled from diverse sources. The hope is that this dataset could inspire and assist future research in deciphering those unknown OBCs. All the codes and datasets are available at https://github.com/Yuliang-Liu/Open-Oracle.

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