Publication | Open Access
R³Net: Recurrent Residual Refinement Network for Saliency Detection
517
Citations
30
References
2018
Year
Unknown Venue
Residual Refinement BlocksConvolutional Neural NetworkImage AnalysisMachine LearningMachine VisionIntermediate Saliency PredictionPattern RecognitionEngineeringScene UnderstandingVision Language ModelVideo TransformerVideo UnderstandingDeep LearningSaliency DetectionComputer Vision
Saliency detection is a fundamental yet challenging task in computer vision, aiming at highlighting the most visually distinctive objects in an image. We propose a novel recurrent residual refinement network (R^3Net) equipped with residual refinement blocks (RRBs) to more accurately detect salient regions of an input image. Our RRBs learn the residual between the intermediate saliency prediction and the ground truth by alternatively leveraging the low-level integrated features and the high-level integrated features of a fully convolutional network (FCN). While the low-level integrated features are capable of capturing more saliency details, the high-level integrated features can reduce non-salient regions in the intermediate prediction. Furthermore, the RRBs can obtain complementary saliency information of the intermediate prediction, and add the residual into the intermediate prediction to refine the saliency maps. We evaluate the proposed R^3Net on five widely-used saliency detection benchmarks by comparing it with 16 state-of-the-art saliency detectors. Experimental results show that our network outperforms our competitors in all the benchmark datasets.
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