CVMar 17

Semantic One-Dimensional Tokenizer for Image Reconstruction and Generation

arXiv:2603.1637394.2h-index: 4Has Code
Predicted impact top 10% in CV · last 90 daysOriginality Highly original
AI Analysis

This addresses the limitation of existing visual tokenizers that use fixed 2D grids and focus on pixel-level restoration, hindering compact global semantics, for applications in image reconstruction and generation.

The paper tackles the problem of visual tokenization by proposing SemTok, a semantic one-dimensional tokenizer that compresses 2D images into 1D discrete tokens with high-level semantics, achieving state-of-the-art image reconstruction with superior fidelity and a compact token representation.

Visual generative models based on latent space have achieved great success, underscoring the significance of visual tokenization. Mapping images to latents boosts efficiency and enables multimodal alignment for scaling up in downstream tasks. Existing visual tokenizers primarily map images into fixed 2D spatial grids and focus on pixel-level restoration, which hinders the capture of representations with compact global semantics. To address these issues, we propose \textbf{SemTok}, a semantic one-dimensional tokenizer that compresses 2D images into 1D discrete tokens with high-level semantics. SemTok sets a new state-of-the-art in image reconstruction, achieving superior fidelity with a remarkably compact token representation. This is achieved via a synergistic framework with three key innovations: a 2D-to-1D tokenization scheme, a semantic alignment constraint, and a two-stage generative training strategy. Building on SemTok, we construct a masked autoregressive generation framework, which yields notable improvements in downstream image generation tasks. Experiments confirm the effectiveness of our semantic 1D tokenization. Our code will be open-sourced.

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