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Zhang Zhao ; Jin Wenda ; Xu Jun ; Cheng Ming-Ming

Abstract
Co-saliency detection (Co-SOD) aims to segment the common salient foregroundin a group of relevant images. In this paper, inspired by human behavior, wepropose a gradient-induced co-saliency detection (GICD) method. We firstabstract a consensus representation for the grouped images in the embeddingspace; then, by comparing the single image with consensus representation, weutilize the feedback gradient information to induce more attention to thediscriminative co-salient features. In addition, due to the lack of Co-SODtraining data, we design a jigsaw training strategy, with which Co-SOD networkscan be trained on general saliency datasets without extra pixel-levelannotations. To evaluate the performance of Co-SOD methods on discovering theco-salient object among multiple foregrounds, we construct a challenging CoCAdataset, where each image contains at least one extraneous foreground alongwith the co-salient object. Experiments demonstrate that our GICD achievesstate-of-the-art performance. Our codes and dataset are available athttps://mmcheng.net/gicd/.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| co-salient-object-detection-on-coca | GICD | MAE: 0.126 Mean F-measure: 0.504 S-measure: 0.658 max E-measure: 0.715 max F-measure: 0.513 mean E-measure: 0.701 |
| co-salient-object-detection-on-cosal2015 | GICD | MAE: 0.071 S-measure: 0.844 max E-measure: 0.887 max F-measure: 0.844 mean E-measure: 0.883 mean F-measure: 0.835 |
| co-salient-object-detection-on-cosod3k | GICD | MAE: 0.079 S-measure: 0.797 max E-measure: 0.848 max F-measure: 0.770 mean E-measure: 0.845 mean F-measure: 0.763 |
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