Authors
Wen-Da Jin, Jun Xu, Qi Han, Yi Zhang, Ming-Ming Cheng
Publication date
2021/3
Journal
IEEE Transactions on Image Processing, Pytorch Code: https://github.com/blanclist/CDNet
Volume
30
Pages
3376-3390
Publisher
IEEE
Description
Current RGB-D salient object detection (SOD) methods utilize the depth stream as complementary information to the RGB stream. However, the depth maps are usually of low-quality in existing RGB-D SOD datasets. Most RGB-D SOD networks trained with these datasets would produce error-prone results. In this paper, we propose a novel Complementary Depth Network (CDNet) to well exploit saliency-informative depth features for RGB-D SOD. To alleviate the influence of low-quality depth maps to RGB-D SOD, we propose to select saliency-informative depth maps as the training targets and leverage RGB features to estimate meaningful depth maps. Besides, to learn robust depth features for accurate prediction, we propose a new dynamic scheme to fuse the depth features extracted from the original and estimated depth maps with adaptive weights. What's more, we design a two-stage cross-modal feature fusion …
Total citations
20212022202320247405931
Scholar articles
WD Jin, J Xu, Q Han, Y Zhang, MM Cheng - IEEE Transactions on Image Processing, 2021