Boosting RGB-D salient object detection with adaptively cooperative dynamic fusion network

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摘要

The suitable employment of RGB and depth data shows great significance in promoting the development of computer vision tasks and robot-environment interactions. However, there are different advantages and disadvantages in the early and late fusion of the two types of data. In addition, due to the diversity of the object information, using a single type of data in a specific scenario results in being semantically misleading. Based on the above considerations, we propose a transformer-based adaptively cooperative dynamic fusion network (ACDNet) with a dynamic composite structure (DCS) for salient object detection. This structure is designed to flexibly utilize the advantages of feature fusion in different stages. Second, an adaptively cooperative semantic guidance (ACG) scheme is designed to suppress inaccurate features in multilevel multimodal feature fusion. Furthermore, we proposed a perceptual aggregation module (PAM) to optimize the network from the perspectives of spatial perception and scale perception, which strengthens the network’s ability to perceive multiscale objects. Extensive experiments conducted on 8 RGB-D SOD datasets illustrate that the proposed network outperforms 24 state-of-the-art algorithms.

论文关键词:RGB-D salient object detection,Gated mechanism,Dilated convolution,Early fusion and late fusion

论文评审过程:Received 16 January 2022, Revised 31 May 2022, Accepted 1 June 2022, Available online 7 June 2022, Version of Record 25 June 2022.

论文官网地址:https://doi.org/10.1016/j.knosys.2022.109205