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Main Authors: Li, Qingfeng, Zhang, Haoxian, He, Xu, Tang, Songlin, Fang, Zhixue, Liu, Xiaoqiang, Li, Pengfei Wan Guoqi
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.25249
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author Li, Qingfeng
Zhang, Haoxian
He, Xu
Tang, Songlin
Fang, Zhixue
Liu, Xiaoqiang
Li, Pengfei Wan Guoqi
author_facet Li, Qingfeng
Zhang, Haoxian
He, Xu
Tang, Songlin
Fang, Zhixue
Liu, Xiaoqiang
Li, Pengfei Wan Guoqi
contents Visual tokenizers play a central role in latent image generation by bridging high-dimensional images and tractable generative modeling. However, most existing tokenizers are still trained with reconstruction-dominated objectives, which often yield latent representations that are only weakly grounded in high-level semantics. Recent approaches improve semantic alignment, but typically treat semantic signals as auxiliary regularization rather than making them functionally necessary for representation learning. We propose SMAP, a SeMantic-Aware Prefix tokenizer that injects class-level semantic conditions into a query-based 1D tokenization framework. To make semantics indispensable during training, SMAP introduces a tail token dropping strategy, which forces semantic conditions and early latent prefixes to bear increasing responsibility under progressively reduced token budgets. To verify that the resulting latent space is useful for generation rather than reconstruction alone, we further introduce CARD, a hybrid Causal AutoRegressive--Diffusion generator. Extensive experiments on ImageNet show that SMAP consistently improves reconstruction quality across discrete and continuous tokenization settings, and that its semantically grounded latent space yields strong downstream generation performance under compact token budgets.
format Preprint
id arxiv_https___arxiv_org_abs_2603_25249
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Semantic-Aware Prefix Learning for Token-Efficient Image Generation
Li, Qingfeng
Zhang, Haoxian
He, Xu
Tang, Songlin
Fang, Zhixue
Liu, Xiaoqiang
Li, Pengfei Wan Guoqi
Computer Vision and Pattern Recognition
Visual tokenizers play a central role in latent image generation by bridging high-dimensional images and tractable generative modeling. However, most existing tokenizers are still trained with reconstruction-dominated objectives, which often yield latent representations that are only weakly grounded in high-level semantics. Recent approaches improve semantic alignment, but typically treat semantic signals as auxiliary regularization rather than making them functionally necessary for representation learning. We propose SMAP, a SeMantic-Aware Prefix tokenizer that injects class-level semantic conditions into a query-based 1D tokenization framework. To make semantics indispensable during training, SMAP introduces a tail token dropping strategy, which forces semantic conditions and early latent prefixes to bear increasing responsibility under progressively reduced token budgets. To verify that the resulting latent space is useful for generation rather than reconstruction alone, we further introduce CARD, a hybrid Causal AutoRegressive--Diffusion generator. Extensive experiments on ImageNet show that SMAP consistently improves reconstruction quality across discrete and continuous tokenization settings, and that its semantically grounded latent space yields strong downstream generation performance under compact token budgets.
title Semantic-Aware Prefix Learning for Token-Efficient Image Generation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.25249