TL;DR
This paper introduces a new challenging CoSOD dataset, proposes a unified framework leveraging SOD techniques, and benchmarks existing algorithms to advance co-salient object detection research.
Contribution
The paper presents CoSOD3k, a large-scale, diverse dataset, a novel CoEG-Net framework integrating SOD methods, and comprehensive benchmarking of algorithms in the field.
Findings
CoSOD3k dataset enhances real-world applicability.
CoEG-Net improves model scalability and stability.
Benchmark results reveal strengths and weaknesses of current methods.
Abstract
In this paper, we conduct a comprehensive study on the co-salient object detection (CoSOD) problem for images. CoSOD is an emerging and rapidly growing extension of salient object detection (SOD), which aims to detect the co-occurring salient objects in a group of images. However, existing CoSOD datasets often have a serious data bias, assuming that each group of images contains salient objects of similar visual appearances. This bias can lead to the ideal settings and effectiveness of models trained on existing datasets, being impaired in real-life situations, where similarities are usually semantic or conceptual. To tackle this issue, we first introduce a new benchmark, called CoSOD3k in the wild, which requires a large amount of semantic context, making it more challenging than existing CoSOD datasets. Our CoSOD3k consists of 3,316 high-quality, elaborately selected images divided…
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