Zengrui Zheng, Kainan Su, Shifeng Lin, Zhiquan Fu, Chenguang Yang
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引用次数: 0
Abstract
Purpose
Visual simultaneous localization and mapping (SLAM) has limitations such as sensitivity to lighting changes and lower measurement accuracy. The effective fusion of information from multiple modalities to address these limitations has emerged as a key research focus. This study aims to provide a comprehensive review of the development of vision-based SLAM (including visual SLAM) for navigation and pose estimation, with a specific focus on techniques for integrating multiple modalities.
Design/methodology/approach
This paper initially introduces the mathematical models and framework development of visual SLAM. Subsequently, this paper presents various methods for improving accuracy in visual SLAM by fusing different spatial and semantic features. This paper also examines the research advancements in vision-based SLAM with respect to multi-sensor fusion in both loosely coupled and tightly coupled approaches. Finally, this paper analyzes the limitations of current vision-based SLAM and provides predictions for future advancements.
Findings
The combination of vision-based SLAM and deep learning has significant potential for development. There are advantages and disadvantages to both loosely coupled and tightly coupled approaches in multi-sensor fusion, and the most suitable algorithm should be chosen based on the specific application scenario. In the future, vision-based SLAM is evolving toward better addressing challenges such as resource-limited platforms and long-term mapping.
Originality/value
This review introduces the development of vision-based SLAM and focuses on the advancements in multimodal fusion. It allows readers to quickly understand the progress and current status of research in this field.
目的 视觉同步定位和绘图(SLAM)存在一些局限性,如对光照变化的敏感性和较低的测量精度。如何有效融合多种模式的信息以解决这些局限性已成为研究的重点。本研究旨在全面回顾基于视觉的 SLAM(包括视觉 SLAM)在导航和姿态估计方面的发展情况,并特别关注整合多种模式的技术。随后,本文介绍了通过融合不同的空间和语义特征来提高视觉 SLAM 精确度的各种方法。本文还探讨了松耦合和紧耦合方法中基于视觉的多传感器融合 SLAM 的研究进展。最后,本文分析了当前基于视觉的 SLAM 的局限性,并对未来的发展进行了预测。 研究结果基于视觉的 SLAM 与深度学习的结合具有巨大的发展潜力。多传感器融合中的松耦合和紧耦合方法各有利弊,应根据具体应用场景选择最合适的算法。未来,基于视觉的 SLAM 将朝着更好地应对资源有限的平台和长期制图等挑战的方向发展。 原创性/价值 本综述介绍了基于视觉的 SLAM 的发展,并重点介绍了多模态融合的进展。它使读者能够快速了解该领域的研究进展和现状。