CMDS-SLAM: real-time efficient centralized multi-robot dense surfel SLAM
Chenle Zuo, Zhao Feng, Xiaohui Xiao
- Year
- 2024
- Citations
- 5
Abstract
Abstract Real-time dense mapping technology for multi-robot systems is crucial in scenarios like search and rescue. This paper presents CMDS-SLAM, a centralized multi-robot dense surfel SLAM system aimed at overcoming limitations in hardware constraints, data transmission, and real-time creation and updating of dense maps in multi-robot SLAM. CMDS-SLAM reduces the transmission of dense information by employing a dense information filtering mechanism based on co-visual keyframes, in conjunction with the extraction and compression of superpixels. Additionally, the method employs a three-stage superpixel segmentation approach to optimize transmission and enhance the efficiency of surfel map generation. Finally, a surfel co-visibility graph is established, and multi-robot surfel map maintenance and updates are achieved through co-visibility graph and map optimization. A comprehensive evaluation of CMDS-SLAM indicates that the method enables multi-robot surfel mapping and significantly alleviates data transmission pressures while achieving real-time updates and maintenance of the surfel map.
Keywords
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