Semantic One-Dimensional Tokenizer for Image Reconstruction and Generation
arXiv cs.CV / 3/18/2026
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Key Points
- SemTok presents a semantic one-dimensional tokenizer that converts 2D images into compact 1D discrete tokens with high-level semantics.
- It combines a 2D-to-1D tokenization scheme, a semantic alignment constraint, and a two-stage generative training strategy to achieve state-of-the-art image reconstruction with fewer tokens.
- The work extends SemTok to a masked autoregressive generation framework that yields improvements in downstream image generation tasks.
- Experimental results confirm the effectiveness of semantic 1D tokenization, and the authors plan to open-source code.
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