cmSalGAN: RGB-D Salient Object Detection with Cross-View Generative Adversarial Networks


Bo Jiang, Zitai Zhou, Xiao Wang, Jin Tang, Bin Luo

School of Computer Science and Technology, Anhui University, Hefei, China

Background and Motivation

Image salient object detection (SOD) is an active research topic in computer vision and multimedia area. Fusing complementary information of RGB and depth has been demonstrated to be effective for image salient object detection which is known as RGB-D salient object detection problem. The main challenge for RGB-D salient object detection is how to exploit the salient cues of both intra-modality (RGB, depth) and cross-modality simultaneously which is known as cross-modality detection problem. In this paper, we tackle this challenge by designing a novel cross-modality Saliency Generative Adversarial Network (\emph{cm}SalGAN). \emph{cm}SalGAN aims to learn an optimal view-invariant and consistent pixel-level representation for RGB and depth images via a novel adversarial learning framework, which thus incorporates both information of intra-view and correlation information of cross-view images simultaneously for RGB-D saliency detection problem.To further improve the detection results, the attention mechanism and edge detection module are also incorporated into \emph{cm}SalGAN.The entire \emph{cm}SalGAN can be trained in an end-to-end manner by using the standard deep neural network framework. Experimental results show that \emph{cm}SalGAN achieves the new state-of-the-art RGB-D saliency detection performance on several benchmark datasets.

The Proposed Method

Experiment

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Citation

@article{jiang2019cmsalgan,

title={cmSalGAN: RGB-D Salient Object Detection with Cross-View Generative Adversarial Networks},

author={Jiang, Bo and Zhou, Zitai and Wang, Xiao and Tang, Jin and Bin, Luo},

journal={IEEE Transactions on Multimedia},

doi={DOI: 10.1109/TMM.2020.2997184},

year={2020}

}