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Main Authors: Sheng, Huankun, Li, Ming, Wei, Yixiang, Fan, Yeying, Wen, Yu-Hui, Gong, Tieliang, Liu, Yong-Jin
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.02685
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author Sheng, Huankun
Li, Ming
Wei, Yixiang
Fan, Yeying
Wen, Yu-Hui
Gong, Tieliang
Liu, Yong-Jin
author_facet Sheng, Huankun
Li, Ming
Wei, Yixiang
Fan, Yeying
Wen, Yu-Hui
Gong, Tieliang
Liu, Yong-Jin
contents Recent advances in object-centric representation learning have shown that slot attention-based methods can effectively decompose visual scenes into object slot representations without supervision. However, existing approaches typically process foreground and background regions indiscriminately, often resulting in background interference and suboptimal instance discovery performance on real-world data. To address this limitation, we propose Foreground-Aware Slot Attention (FASA), a two-stage framework that explicitly separates foreground from background to enable precise object discovery. In the first stage, FASA performs a coarse scene decomposition to distinguish foreground from background regions through a dual-slot competition mechanism. These slots are initialized via a clustering-based strategy, yielding well-structured representations of salient regions. In the second stage, we introduce a masked slot attention mechanism where the first slot captures the background while the remaining slots compete to represent individual foreground objects. To further address over-segmentation of foreground objects, we incorporate pseudo-mask guidance derived from a patch affinity graph constructed with self-supervised image features to guide the learning of foreground slots. Extensive experiments on both synthetic and real-world datasets demonstrate that FASA consistently outperforms state-of-the-art methods, validating the effectiveness of explicit foreground modeling and pseudo-mask guidance for robust scene decomposition and object-coherent representation. Code will be made publicly available.
format Preprint
id arxiv_https___arxiv_org_abs_2512_02685
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Unsupervised Structural Scene Decomposition via Foreground-Aware Slot Attention with Pseudo-Mask Guidance
Sheng, Huankun
Li, Ming
Wei, Yixiang
Fan, Yeying
Wen, Yu-Hui
Gong, Tieliang
Liu, Yong-Jin
Computer Vision and Pattern Recognition
Recent advances in object-centric representation learning have shown that slot attention-based methods can effectively decompose visual scenes into object slot representations without supervision. However, existing approaches typically process foreground and background regions indiscriminately, often resulting in background interference and suboptimal instance discovery performance on real-world data. To address this limitation, we propose Foreground-Aware Slot Attention (FASA), a two-stage framework that explicitly separates foreground from background to enable precise object discovery. In the first stage, FASA performs a coarse scene decomposition to distinguish foreground from background regions through a dual-slot competition mechanism. These slots are initialized via a clustering-based strategy, yielding well-structured representations of salient regions. In the second stage, we introduce a masked slot attention mechanism where the first slot captures the background while the remaining slots compete to represent individual foreground objects. To further address over-segmentation of foreground objects, we incorporate pseudo-mask guidance derived from a patch affinity graph constructed with self-supervised image features to guide the learning of foreground slots. Extensive experiments on both synthetic and real-world datasets demonstrate that FASA consistently outperforms state-of-the-art methods, validating the effectiveness of explicit foreground modeling and pseudo-mask guidance for robust scene decomposition and object-coherent representation. Code will be made publicly available.
title Unsupervised Structural Scene Decomposition via Foreground-Aware Slot Attention with Pseudo-Mask Guidance
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.02685