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Gyungin Shin; Samuel Albanie; Weidi Xie

Abstract
In this paper, we tackle the challenging task of unsupervised salient object detection (SOD) by leveraging spectral clustering on self-supervised features. We make the following contributions: (i) We revisit spectral clustering and demonstrate its potential to group the pixels of salient objects; (ii) Given mask proposals from multiple applications of spectral clustering on image features computed from various self-supervised models, e.g., MoCov2, SwAV, DINO, we propose a simple but effective winner-takes-all voting mechanism for selecting the salient masks, leveraging object priors based on framing and distinctiveness; (iii) Using the selected object segmentation as pseudo groundtruth masks, we train a salient object detector, dubbed SelfMask, which outperforms prior approaches on three unsupervised SOD benchmarks. Code is publicly available at https://github.com/NoelShin/selfmask.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| unsupervised-saliency-detection-on-dut-omron | SelfMask | Accuracy: 91.9 IoU: 65.5 maximal F-measure: 85.2 |
| unsupervised-saliency-detection-on-duts | SelfMask | Accuracy: 93.3 IoU: 66 maximal F-measure: 88.2 |
| unsupervised-saliency-detection-on-ecssd | SelfMask | Accuracy: 95.5 IoU: 81.8 maximal F-measure: 95.6 |
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