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Main Authors: Shi, Yiang, Guo, Xiaoyang, Yin, Wei, Jia, Mingkai, Zhang, Qian, Hu, Xiaolin, Liu, Wenyu, Wang, Xinggang
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.13515
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author Shi, Yiang
Guo, Xiaoyang
Yin, Wei
Jia, Mingkai
Zhang, Qian
Hu, Xiaolin
Liu, Wenyu
Wang, Xinggang
author_facet Shi, Yiang
Guo, Xiaoyang
Yin, Wei
Jia, Mingkai
Zhang, Qian
Hu, Xiaolin
Liu, Wenyu
Wang, Xinggang
contents The image tokenizer is a critical component in AR image generation, as it determines how rich and structured visual content is encoded into compact representations. Existing quantization-based tokenizers such as VQ-GAN primarily focus on appearance features like texture and color, often neglecting geometric structures due to their patch-based design. In this work, we explored how to incorporate more visual information into the tokenizer and proposed a new framework named Visual Gaussian Quantization (VGQ), a novel tokenizer paradigm that explicitly enhances structural modeling by integrating 2D Gaussians into traditional visual codebook quantization frameworks. Our approach addresses the inherent limitations of naive quantization methods such as VQ-GAN, which struggle to model structured visual information due to their patch-based design and emphasis on texture and color. In contrast, VGQ encodes image latents as 2D Gaussian distributions, effectively capturing geometric and spatial structures by directly modeling structure-related parameters such as position, rotation and scale. We further demonstrate that increasing the density of 2D Gaussians within the tokens leads to significant gains in reconstruction fidelity, providing a flexible trade-off between token efficiency and visual richness. On the ImageNet 256x256 benchmark, VGQ achieves strong reconstruction quality with an rFID score of 1.00. Furthermore, by increasing the density of 2D Gaussians within the tokens, VGQ gains a significant boost in reconstruction capability and achieves a state-of-the-art reconstruction rFID score of 0.556 and a PSNR of 24.93, substantially outperforming existing methods. Codes will be released soon.
format Preprint
id arxiv_https___arxiv_org_abs_2508_13515
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle 2D Gaussians Meet Visual Tokenizer
Shi, Yiang
Guo, Xiaoyang
Yin, Wei
Jia, Mingkai
Zhang, Qian
Hu, Xiaolin
Liu, Wenyu
Wang, Xinggang
Computer Vision and Pattern Recognition
The image tokenizer is a critical component in AR image generation, as it determines how rich and structured visual content is encoded into compact representations. Existing quantization-based tokenizers such as VQ-GAN primarily focus on appearance features like texture and color, often neglecting geometric structures due to their patch-based design. In this work, we explored how to incorporate more visual information into the tokenizer and proposed a new framework named Visual Gaussian Quantization (VGQ), a novel tokenizer paradigm that explicitly enhances structural modeling by integrating 2D Gaussians into traditional visual codebook quantization frameworks. Our approach addresses the inherent limitations of naive quantization methods such as VQ-GAN, which struggle to model structured visual information due to their patch-based design and emphasis on texture and color. In contrast, VGQ encodes image latents as 2D Gaussian distributions, effectively capturing geometric and spatial structures by directly modeling structure-related parameters such as position, rotation and scale. We further demonstrate that increasing the density of 2D Gaussians within the tokens leads to significant gains in reconstruction fidelity, providing a flexible trade-off between token efficiency and visual richness. On the ImageNet 256x256 benchmark, VGQ achieves strong reconstruction quality with an rFID score of 1.00. Furthermore, by increasing the density of 2D Gaussians within the tokens, VGQ gains a significant boost in reconstruction capability and achieves a state-of-the-art reconstruction rFID score of 0.556 and a PSNR of 24.93, substantially outperforming existing methods. Codes will be released soon.
title 2D Gaussians Meet Visual Tokenizer
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2508.13515