Deep learning-based scene understanding for autonomous robots: a survey

Jianjun Ni , Yan Chen , Guangyi Tang , Jiamei Shi , Weidong Cao , Pengfei Shi

Intelligence & Robotics ›› 2023, Vol. 3 ›› Issue (3) : 374 -401.

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Intelligence & Robotics ›› 2023, Vol. 3 ›› Issue (3) :374 -401. DOI: 10.20517/ir.2023.22
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Deep learning-based scene understanding for autonomous robots: a survey

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Abstract

Autonomous robots are a hot research subject within the fields of science and technology, which has a big impact on social-economic development. The ability of the autonomous robot to perceive and understand its working environment is the basis for solving more complicated issues. In recent years, an increasing number of artificial intelligence-based methods have been proposed in the field of scene understanding for autonomous robots, and deep learning is one of the current key areas in this field. Outstanding gains have been attained in the field of scene understanding for autonomous robots based on deep learning. Thus, this paper presents a review of recent research on the deep learning-based scene understanding for autonomous robots. This survey provides a detailed overview of the evolution of robotic scene understanding and summarizes the applications of deep learning methods in scene understanding for autonomous robots. In addition, the key issues in autonomous robot scene understanding are analyzed, such as pose estimation, saliency prediction, semantic segmentation, and object detection. Then, some representative deep learning-based solutions for these issues are summarized. Finally, future challenges in the field of the scene understanding for autonomous robots are discussed.

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Autonomous robots / scene understanding / deep learning / object detection / pose estimation

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Jianjun Ni, Yan Chen, Guangyi Tang, Jiamei Shi, Weidong Cao, Pengfei Shi. Deep learning-based scene understanding for autonomous robots: a survey. Intelligence & Robotics, 2023, 3(3): 374-401 DOI:10.20517/ir.2023.22

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