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Learning RGB-D Salient Object Detection using background enclosure, depth contrast, and top-down features

About

Recently, deep Convolutional Neural Networks (CNN) have demonstrated strong performance on RGB salient object detection. Although, depth information can help improve detection results, the exploration of CNNs for RGB-D salient object detection remains limited. Here we propose a novel deep CNN architecture for RGB-D salient object detection that exploits high-level, mid-level, and low level features. Further, we present novel depth features that capture the ideas of background enclosure and depth contrast that are suitable for a learned approach. We show improved results compared to state-of-the-art RGB-D salient object detection methods. We also show that the low-level and mid-level depth features both contribute to improvements in the results. Especially, F-Score of our method is 0.848 on RGBD1000 dataset, which is 10.7% better than the second place.

Riku Shigematsu, David Feng, Shaodi You, Nick Barnes• 2017

Related benchmarks

TaskDatasetResultRank
Salient Object DetectionNLPR (test)
F-beta90
76
Saliency DetectionNJUD (test)
MAE0.12
68
Salient Object DetectionRGBD135 (test)
Sx (Structure Measure)0.824
49
RGB saliency detectionLFSD (test)
F_beta Score79.5
43
Salient Object DetectionDUT (test)
MAE11.1
41
Salient Object DetectionSSD (test)
F-measure78.3
33
Salient Object DetectionDUT
F-beta Score80.7
27
Salient Object DetectionSTEREO797 (test)
F-beta0.857
17
Salient Object DetectionSTEREO797
F-beta0.857
17
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