A novel network for classification of cuneiform tablet metadata
This paper introduces a novel convolution-inspired network that effectively classifies cuneiform tablet metadata by integrating local and global information from high-resolution point clouds, outperforming the state-of-the-art Point-BERT model while addressing challenges posed by limited annotated datasets.