Environment Perception Technology for Intelligent Robots in Complex Environments: A Review

Jiajun Wu, Jun Gao, Jiangang Yi, P. Liu, Changsong Xu
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引用次数: 2

Abstract

Environmental perception is a necessary prerequisite for intelligent robots to perform specified tasks, and is the basis for subsequent control and decision-making. In recent years, with the rapid development of deep learning technology and the dramatic improvement of hardware performance, vision-based environmental perception technologies, such as target recognition and target detection, have made significant progress. However, most vision algorithms are developed based on images with stable lighting conditions and no significant disturbances. In fact, robots often need to operate in unstructured, complex conditions or visually degraded environments. Visual perception alone cannot meet the job requirements and it lacks the ability to adapt to the environment. Therefore, the environment perception technology based on multi-sensor fusion has become a popular research direction. In this paper, we first analyze the characteristics of sensors required for perception, and briefly review the uni-modal sensor application status in complex environments such as mines, railways, highways, tunnels, etc. Secondly, we introduce the datasets and sensor fusion methods for robotics perception. Thirdly, we provide an overview of the multi-modal perception technology applied on intelligent robot. Finally, we summarize the challenges and future development trends in this direction.
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复杂环境下智能机器人的环境感知技术综述
环境感知是智能机器人完成特定任务的必要前提,也是后续控制和决策的基础。近年来,随着深度学习技术的快速发展和硬件性能的大幅提升,基于视觉的环境感知技术如目标识别、目标检测等取得了重大进展。然而,大多数视觉算法都是基于稳定的光照条件和无明显干扰的图像开发的。事实上,机器人经常需要在非结构化、复杂的条件下或视觉退化的环境中工作。视觉感知本身不能满足工作要求,缺乏对环境的适应能力。因此,基于多传感器融合的环境感知技术已成为一个热门的研究方向。本文首先分析了感知所需传感器的特点,并简要回顾了单模态传感器在矿山、铁路、公路、隧道等复杂环境中的应用现状。其次,介绍了机器人感知的数据集和传感器融合方法。第三,综述了多模态感知技术在智能机器人上的应用。最后,总结了该方向面临的挑战和未来的发展趋势。
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