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FlowDIS: Language-Guided Dichotomous Image Segmentation with Flow Matching

About

Accurate image segmentation is essential for modern computer vision applications such as image editing, autonomous driving, and medical image analysis. In recent years, Dichotomous Image Segmentation (DIS) has become a standard task for training and evaluating highly accurate segmentation models. Existing DIS approaches often fail to preserve fine-grained details or fully capture the semantic structure of the foreground. To address these challenges, we present FlowDIS, a novel dichotomous image segmentation method built on the flow matching framework, which learns a time-dependent vector field to transport the image distribution to the corresponding mask distribution, optionally conditioned on a text prompt. Moreover, with our Position-Aware Instance Pairing (PAIP) training strategy, FlowDIS offers strong controllability through text prompts, enabling precise, pixel-level object segmentation. Extensive experiments demonstrate that our method significantly outperforms state-of-the-art approaches both with and without language guidance. Compared with the best prior DIS method, FlowDIS achieves a 5.5% higher $F_{\beta}^{\omega}$ measure and 43% lower MAE ($\mathcal{M}$) on the DIS-TE test set. The code is available at: https://github.com/Picsart-AI-Research/FlowDIS

Andranik Sargsyan, Shant Navasardyan• 2026

Related benchmarks

TaskDatasetResultRank
Semantic segmentationCOCO Object (val)
mIoU0.477
101
Dichotomous Image SegmentationDIS5K DIS-TE1 (test)
Fmax96.1
24
Dichotomous Image SegmentationDIS5K DIS-TE2 (test)
Fmax96.5
24
Dichotomous Image SegmentationDIS5K DIS-TE3 (test)
Fmax0.963
24
Dichotomous Image SegmentationDIS5K DIS-TE4 (test)
Fmax0.946
24
Dichotomous Image SegmentationDIS5K DIS-TE Overall (test)
Fmax Score0.959
24
Dichotomous Image SegmentationDIS5K DIS-VD (val)
Weighted F-measure93.8
12
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