Back to Search Start Over

RGB-D Saliency Detection via Cascaded Mutual Information Minimization

Authors :
Zhang, Jing
Fan, Deng-Ping
Dai, Yuchao
Yu, Xin
Zhong, Yiran
Barnes, Nick
Shao, Ling
Publication Year :
2021

Abstract

Existing RGB-D saliency detection models do not explicitly encourage RGB and depth to achieve effective multi-modal learning. In this paper, we introduce a novel multi-stage cascaded learning framework via mutual information minimization to "explicitly" model the multi-modal information between RGB image and depth data. Specifically, we first map the feature of each mode to a lower dimensional feature vector, and adopt mutual information minimization as a regularizer to reduce the redundancy between appearance features from RGB and geometric features from depth. We then perform multi-stage cascaded learning to impose the mutual information minimization constraint at every stage of the network. Extensive experiments on benchmark RGB-D saliency datasets illustrate the effectiveness of our framework. Further, to prosper the development of this field, we contribute the largest (7x larger than NJU2K) dataset, which contains 15,625 image pairs with high quality polygon-/scribble-/object-/instance-/rank-level annotations. Based on these rich labels, we additionally construct four new benchmarks with strong baselines and observe some interesting phenomena, which can motivate future model design. Source code and dataset are available at "https://github.com/JingZhang617/cascaded_rgbd_sod".<br />Comment: Accepted as ICCV2021 paper

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2109.07246
Document Type :
Working Paper