Towards Visual Query Segmentation in the Wild
Bing Fan, Minghao Li, Hanzhi Zhang, Shaohua Dong, Naga Prudhvi Mareedu, Weishi Shi, Yunhe Feng, Yan Huang, Heng Fan

TL;DR
This paper introduces visual query segmentation (VQS), a new task for pixel-level object localization in videos, along with a large-scale benchmark VQS-4K and a novel method VQ-SAM that significantly advances the field.
Contribution
It defines the VQS task, creates the VQS-4K benchmark dataset, and proposes the VQ-SAM method, advancing pixel-level video object localization research.
Findings
VQ-SAM outperforms existing approaches on VQS-4K.
VQS-4K is the first dedicated benchmark for VQS.
The method achieves promising results in comprehensive object localization.
Abstract
In this paper, we introduce visual query segmentation (VQS), a new paradigm of visual query localization (VQL) that aims to segment all pixel-level occurrences of an object of interest in an untrimmed video, given an external visual query. Compared to existing VQL locating only the last appearance of a target using bounding boxes, VQS enables more comprehensive (i.e., all object occurrences) and precise (i.e., pixel-level masks) localization, making it more practical for real-world scenarios. To foster research on this task, we present VQS-4K, a large-scale benchmark dedicated to VQS. Specifically, VQS-4K contains 4,111 videos with more than 1.3 million frames and covers a diverse set of 222 object categories. Each video is paired with a visual query defined by a frame outside the search video and its target mask, and annotated with spatial-temporal masklets corresponding to the queried…
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Taxonomy
TopicsVisual Attention and Saliency Detection · Advanced Image and Video Retrieval Techniques · Advanced Neural Network Applications
