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S2-UniSeg: Fast Universal Agglomerative Pooling for Scalable Segment Anything without Supervision

9 August 2025
Huihui Xu
Jin Ye
Hongqiu Wang
Changkai Ji
Jiashi Lin
Ming Hu
Ziyan Huang
Pengcheng Chen
Chenglong Ma
Tianbin Li
Lihao Liu
Junjun He
Lei Zhu
ArXiv (abs)PDFHTMLGithub (2★)
Main:7 Pages
10 Figures
Bibliography:3 Pages
6 Tables
Appendix:8 Pages
Abstract

Recent self-supervised image segmentation models have achieved promising performance on semantic segmentation and class-agnostic instance segmentation. However, their pretraining schedule is multi-stage, requiring a time-consuming pseudo-masks generation process between each training epoch. This time-consuming offline process not only makes it difficult to scale with training dataset size, but also leads to sub-optimal solutions due to its discontinuous optimization routine. To solve these, we first present a novel pseudo-mask algorithm, Fast Universal Agglomerative Pooling (UniAP). Each layer of UniAP can identify groups of similar nodes in parallel, allowing to generate both semantic-level and instance-level and multi-granular pseudo-masks within ens of milliseconds for one image. Based on the fast UniAP, we propose the Scalable Self-Supervised Universal Segmentation (S2-UniSeg), which employs a student and a momentum teacher for continuous pretraining. A novel segmentation-oriented pretext task, Query-wise Self-Distillation (QuerySD), is proposed to pretrain S2-UniSeg to learn the local-to-global correspondences. Under the same setting, S2-UniSeg outperforms the SOTA UnSAM model, achieving notable improvements of AP+6.9 on COCO, AR+11.1 on UVO, PixelAcc+4.5 on COCOStuff-27, RQ+8.0 on Cityscapes. After scaling up to a larger 2M-image subset of SA-1B, S2-UniSeg further achieves performance gains on all four benchmarks. Our code and pretrained models are available atthis https URL

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