Salient Objects in Clutter: Bringing Salient Object Detection to the Foreground
About
We provide a comprehensive evaluation of salient object detection (SOD) models. Our analysis identifies a serious design bias of existing SOD datasets which assumes that each image contains at least one clearly outstanding salient object in low clutter. The design bias has led to a saturated high performance for state-of-the-art SOD models when evaluated on existing datasets. The models, however, still perform far from being satisfactory when applied to real-world daily scenes. Based on our analyses, we first identify 7 crucial aspects that a comprehensive and balanced dataset should fulfill. Then, we propose a new high quality dataset and update the previous saliency benchmark. Specifically, our SOC (Salient Objects in Clutter) dataset, includes images with salient and non-salient objects from daily object categories. Beyond object category annotations, each salient image is accompanied by attributes that reflect common challenges in real-world scenes. Finally, we report attribute-based performance assessment on our dataset.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Salient Object Detection | NLPR (test) | F-beta61.4 | 76 | |
| Saliency Detection | NJUD (test) | MAE0.108 | 68 | |
| Salient Object Detection | NLPR | MAE0.076 | 52 | |
| Salient Object Detection | NJUD | MAE10.8 | 52 | |
| Salient Object Detection | STEREO Dataset | F-beta Score71.8 | 23 |