Research Progress of RGB-D Salient Object Detection in Deep Learning Era
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    Abstract:

    Inspired by the human visual attention mechanism, salient object detection (SOD) aims to detect the most attractive and interesting object or region in a given scene. In recent years, with the development and popularization of depth cameras, depth map has been successfully applied to various computer vision tasks, which also provides new ideas for the salient object detection task at the same time. The introduction of depth map not only enables the computer to simulate the human visual system more comprehensively, but also provides new solutions for the detection of some difficult scenes, such as low contrast and complex backgrounds by utilizing the structure information and location information of the depth map. In view of the rapid development of RGB-D SOD task in the era of deep learning, this studyaims to sort out and summarize the existing related research outputs from the perspective of key scientific problem solutions, and conduct the quantitative analysis and qualitative comparison of different methods on the commonly used RGB-D SOD datasets. Finally, the challenges and prospects are summarized for the future development trends.

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丛润民,张晨,徐迈,刘鸿羽,赵耀.深度学习时代下的RGB-D显著性目标检测研究进展.软件学报,2023,34(4):1711-1731

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History
  • Received:September 23,2021
  • Revised:February 05,2022
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  • Online: July 22,2022
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