CVDec 7, 2025

Omni-Referring Image Segmentation

arXiv:2512.06862v1h-index: 25
Originality Incremental advance
AI Analysis

It addresses the problem of flexible and generalized image segmentation for AI and computer vision applications, but is incremental as it builds on existing referring segmentation tasks.

The paper introduces Omni-Referring Image Segmentation (OmniRIS), a task for highly generalized image segmentation that supports text and visual prompts like masks or boxes, and proposes OmniSegNet as a baseline, validated on a new dataset with 186,939 prompts for 30,956 images.

In this paper, we propose a novel task termed Omni-Referring Image Segmentation (OmniRIS) towards highly generalized image segmentation. Compared with existing unimodally conditioned segmentation tasks, such as RIS and visual RIS, OmniRIS supports the input of text instructions and reference images with masks, boxes or scribbles as omni-prompts. This property makes it can well exploit the intrinsic merits of both text and visual modalities, i.e., granular attribute referring and uncommon object grounding, respectively. Besides, OmniRIS can also handle various segmentation settings, such as one v.s. many and many v.s. many, further facilitating its practical use. To promote the research of OmniRIS, we also rigorously design and construct a large dataset termed OmniRef, which consists of 186,939 omni-prompts for 30,956 images, and establish a comprehensive evaluation system. Moreover, a strong and general baseline termed OmniSegNet is also proposed to tackle the key challenges of OmniRIS, such as omni-prompt encoding. The extensive experiments not only validate the capability of OmniSegNet in following omni-modal instructions, but also show the superiority of OmniRIS for highly generalized image segmentation.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes