Global-and-Local Collaborative Learning for Co-Salient Object Detection
Runmin Cong, Ning Yang, Chongyi Li, Huazhu Fu, Yao Zhao, Qingming, Huang, Sam Kwong

TL;DR
This paper introduces a global-and-local collaborative learning framework for co-salient object detection, effectively capturing inter-image relationships from multiple perspectives to improve detection accuracy.
Contribution
It proposes a novel architecture combining global and local correspondence modeling with adaptive feature integration for enhanced co-saliency detection.
Findings
Outperforms eleven state-of-the-art methods on three benchmarks.
Achieves superior results with a smaller training dataset.
Effectively captures comprehensive inter-image relationships.
Abstract
The goal of co-salient object detection (CoSOD) is to discover salient objects that commonly appear in a query group containing two or more relevant images. Therefore, how to effectively extract inter-image correspondence is crucial for the CoSOD task. In this paper, we propose a global-and-local collaborative learning architecture, which includes a global correspondence modeling (GCM) and a local correspondence modeling (LCM) to capture comprehensive inter-image corresponding relationship among different images from the global and local perspectives. Firstly, we treat different images as different time slices and use 3D convolution to integrate all intra features intuitively, which can more fully extract the global group semantics. Secondly, we design a pairwise correlation transformation (PCT) to explore similarity correspondence between pairwise images and combine the multiple local…
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Taxonomy
TopicsVisual Attention and Saliency Detection
MethodsConvolution · 3D Convolution
