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Alignment-Free RGB-T Salient Object Detection: A Large-scale Dataset and Progressive Correlation Network

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Alignment-free RGB-Thermal (RGB-T) salient object detection (SOD) aims to achieve robust performance in complex scenes by directly leveraging the complementary information from unaligned visible-thermal image pairs, without requiring manual alignment. However, the labor-intensive process of collecting and annotating image pairs limits the scale of existing benchmarks, hindering the advancement of alignment-free RGB-T SOD. In this paper, we construct a large-scale and high-diversity unaligned RGB-T SOD dataset named UVT20K, comprising 20,000 image pairs, 407 scenes, and 1256 object categories. All samples are collected from real-world scenarios with various challenges, such as low illumination, image clutter, complex salient objects, and so on. To support the exploration for further research, each sample in UVT20K is annotated with a comprehensive set of ground truths, including saliency masks, scribbles, boundaries, and challenge attributes. In addition, we propose a Progressive Correlation Network (PCNet), which models inter- and intra-modal correlations on the basis of explicit alignment to achieve accurate predictions in unaligned image pairs. Extensive experiments conducted on unaligned and aligned datasets demonstrate the effectiveness of our method.Code and dataset are available at https://github.com/Angknpng/PCNet.

Kunpeng Wang, Keke Chen, Chenglong Li, Zhengzheng Tu, Bin Luo• 2024

Related benchmarks

TaskDatasetResultRank
Salient Object DetectionVT5000
S-Measure0.92
50
Salient Object DetectionVT821
S-Measure0.913
36
Salient Object DetectionVT1000
Fm (F-measure)0.926
19
Salient Object Detectionun-VT821
Fm86.9
18
Salient Object Detectionun-VT1000
Fm91
18
Salient Object DetectionUVT 2000
Fm69.1
18
Salient Object Detectionun-VT5000
Fm86.3
18
Salient Object DetectionUVT20K
F-measure (Fm)0.827
17
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