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A Review of Visual-LiDAR Fusion based Simultaneous Localization and Mapping下载
资源介绍
Autonomous navigation requires both a precise and robust mapping and localization
solution. In this context, Simultaneous Localization and Mapping (SLAM) is a very well-suited
solution. SLAM is used for many applications including mobile robotics, self-driving cars, unmanned
aerial vehicles, or autonomous underwater vehicles. In these domains, both visual and visual-IMU
SLAM are well studied, and improvements are regularly proposed in the literature. However,
LiDAR-SLAM techniques seem to be relatively the same as ten or twenty years ago. Moreover,
few research works focus on vision-LiDAR approaches, whereas such a fusion would have many
advantages. Indeed, hybridized solutions offer improvements in the performance of SLAM, especially
with respect to aggressive motion, lack of light, or lack of visual features. This study provides a
comprehensive survey on visual-LiDAR SLAM. After a summary of the basic idea of SLAM and its
implementation, we give a complete review of the state-of-the-art of SLAM research, focusing on
solutions using vision, LiDAR, and a sensor fusion of both modalities