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ARGenSeg: Image Segmentation with Autoregressive Image Generation Model
by
Huang, Ziyuan
, Wang, Xiaolong
, Zhou, Jun
, Ru, Lixiang
, Zheng, Dandan
, Ji, Kaixiang
, Chen, Jingdong
in
Decoders
/ Image processing
/ Image segmentation
/ Inference
/ Large language models
/ Pixels
/ Representations
/ Target masking
2025
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ARGenSeg: Image Segmentation with Autoregressive Image Generation Model
by
Huang, Ziyuan
, Wang, Xiaolong
, Zhou, Jun
, Ru, Lixiang
, Zheng, Dandan
, Ji, Kaixiang
, Chen, Jingdong
in
Decoders
/ Image processing
/ Image segmentation
/ Inference
/ Large language models
/ Pixels
/ Representations
/ Target masking
2025
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Do you wish to request the book?
ARGenSeg: Image Segmentation with Autoregressive Image Generation Model
by
Huang, Ziyuan
, Wang, Xiaolong
, Zhou, Jun
, Ru, Lixiang
, Zheng, Dandan
, Ji, Kaixiang
, Chen, Jingdong
in
Decoders
/ Image processing
/ Image segmentation
/ Inference
/ Large language models
/ Pixels
/ Representations
/ Target masking
2025
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ARGenSeg: Image Segmentation with Autoregressive Image Generation Model
Paper
ARGenSeg: Image Segmentation with Autoregressive Image Generation Model
2025
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Overview
We propose a novel AutoRegressive Generation-based paradigm for image Segmentation (ARGenSeg), achieving multimodal understanding and pixel-level perception within a unified framework. Prior works integrating image segmentation into multimodal large language models (MLLMs) typically employ either boundary points representation or dedicated segmentation heads. These methods rely on discrete representations or semantic prompts fed into task-specific decoders, which limits the ability of the MLLM to capture fine-grained visual details. To address these challenges, we introduce a segmentation framework for MLLM based on image generation, which naturally produces dense masks for target objects. We leverage MLLM to output visual tokens and detokenize them into images using an universal VQ-VAE, making the segmentation fully dependent on the pixel-level understanding of the MLLM. To reduce inference latency, we employ a next-scale-prediction strategy to generate required visual tokens in parallel. Extensive experiments demonstrate that our method surpasses prior state-of-the-art approaches on multiple segmentation datasets with a remarkable boost in inference speed, while maintaining strong understanding capabilities.
Publisher
Cornell University Library, arXiv.org
Subject
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