Recursive Contour Saliency Blending Network for Accurate Salient Object Detection

28 May 2021  ·  Yi Ke Yun, Takahiro Tsubono ·

Contour information plays a vital role in salient object detection. However, excessive false positives remain in predictions from existing contour-based models due to insufficient contour-saliency fusion. In this work, we designed a network for better edge quality in salient object detection. We proposed a contour-saliency blending module to exchange information between contour and saliency. We adopted recursive CNN to increase contour-saliency fusion while keeping the total trainable parameters the same. Furthermore, we designed a stage-wise feature extraction module to help the model pick up the most helpful features from previous intermediate saliency predictions. Besides, we proposed two new loss functions, namely Dual Confinement Loss and Confidence Loss, for our model to generate better boundary predictions. Evaluation results on five common benchmark datasets reveal that our model achieves competitive state-of-the-art performance.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Salient Object Detection DUT-OMRON RCSB max_F1 0.810 # 6
MAE 0.045 # 3
E-measure 0.856 # 6
S-measure 0.820 # 6
Salient Object Detection DUTS-TE RCSB MAE 0.034 # 4
max_F1 0.889 # 6
E-measure 0.903 # 5
S-measure 0.878 # 1
Salient Object Detection ECSSD RCSB MAE 0.033 # 5
max_F1 0.945 # 6
S-measure 0.921 # 7
E-measure 0.923 # 7
Salient Object Detection HKU-IS RCSB MAE 0.027 # 4
E-measure 0.954 # 4
max_F1 0.938 # 5
S-measure 0.918 # 5
Salient Object Detection PASCAL-S RCSB MAE 0.059 # 5
max_F1 0.875 # 3
S-measure 0.854 # 6
E-measure 0.853 # 7

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